Pacific Lamprey Entosphenus tridentatus is an ecologically and culturally important anadromous species of conservation concern for which fisheries managers use information on occupancy state in streams to assess species status and inform stream management decisions. Here we developed a stepwise approach that incorporates the potential for nondetection and a preselected expected maximum probability of stream occupancy if field crews do not document larval Pacific Lamprey during sampling. Our approach includes seven steps: define the occupancy question; select the maximum acceptable probability of occupancy, if the species is not documented during sampling; define an assumed detection probability for the target organism; calculate required sampling effort; select sampling units; conduct sampling; and interpret sampling results into probabilistic occupancy conclusions. We examined detection probability of our approach for larval lamprey using data from multiple occupied streams in the Pacific Northwest. We illustrated our approach by evaluating Balm Grove Dam as a barrier to Pacific Lamprey migration in Gales Creek, Oregon. Bayesian estimates of detection probability in occupied streams ranged from 0.15 to 0.94, with an overall median of 0.70 (95% credible interval: 0.60–0.79). Assuming detection probability is at least 0.15 (i.e., lowest estimate), 19 reaches are required for the expected maximum probability of occupancy to be not more than 0.05, if the species is not documented through our sampling approach. Although detected downstream, we detected no larvae upstream of Balm Grove Dam; thus, we conclude that the maximum probability of occupancy upstream of Balm Grove Dam was not more than 0.05 at an assumed detection probability of 0.4, suggesting the dam as a barrier to adult migration. We provide an occupancy assessment tool with standardized sampling requirements that incorporates the potential for nondetection and the flexibility to select an expected maximum probability of occupancy if researchers document no larvae, to aid management and restoration in a single stream.

It is often essential for fisheries managers to assess whether a stream area is occupied (occupancy state = 1) or unoccupied (occupancy state = 0) by a fish species of conservation concern before initiating research, development, or restoration projects in the area. If crews detect the species in question through field sampling, managers know the occupancy state is one. If they detect no individuals, it is unclear whether the stream is truly unoccupied or if, by chance, zero individuals were collected from an occupied stream. If the fish species truly occupies the area, increasing effective sampling would decrease the probability of nondetection, but even intensive and extensive sampling cannot reduce the probability of nondetection to zero. The inability to differentiate between the two states can be problematic, but understanding the expected probability of occupancy in case researchers do not document the species can aid area and species management decisions.

Pacific Lamprey Entosphenus tridentatus is an ecologically and culturally important anadromous species of conservation concern for which fisheries managers use information on occupancy state in streams to assess species status and inform stream management decisions. Pacific Lamprey import marine-derived nutrients into rivers and streams and are prey for freshwater and marine predators (Beamish 1980; Close et al. 2002; Riemer et al. 2011; Clemens et al. 2019). Native American tribes harvest Pacific Lamprey in freshwater for spiritual, subsistence, and medicinal purposes (Close et al. 2002; Wang and Schaller 2015; Noble et al. 2016). Pacific Lamprey have experienced declines in distribution partially due to migration barriers, such as dams. Dams impede migration and could be one major threat to Pacific Lamprey persistence (Close et al 2002; Wang and Schaller 2015).

We developed a stepwise sampling approach to improve standardization and incorporate the potential for nondetection to address the question “what is the probability that a specific stream area is occupied by Pacific Lamprey if none are documented after sampling?” to aid species conservation and stream management. After describing the stepwise approach, we estimate detection probability of the approach in multiple streams in the Pacific Northwest and then illustrate use of the approach to assess the probability of occupancy both above and below a potential passage barrier for Pacific Lamprey in Gales Creek, Oregon. We selected a barrier assessment as an example of the approach since questions about whether specific barriers block Pacific Lamprey migration are common and vital for decisions regarding dam removal and passage in streams. Researchers could apply this stepwise sampling approach to other species and habitats; however, they must consider assumed values and field methods on a habitat- and species-specific basis. Similarly, we used a barrier assessment as an example, but others could apply the approach to a variety of occupancy questions relevant to larval lampreys, including, but not limited to, those discussed herein.

Stepwise approach description

Step 1: define the occupancy question.

It is important for researchers to consider if an occupancy approach is appropriate to meet study or management purposes. Table 1 lists some potential purposes specific to Pacific Lamprey (not exhaustive) that researchers could address using our approach. One common example relevant to Pacific Lamprey could be to assess whether a specific dam is a barrier to upstream migration of adults. Researchers may accomplish this by evaluating the expected probability of occupancy in the stream both upstream and downstream of the dam. If field crews document Pacific Lamprey downstream, but not upstream, managers could use the expected probability that the area upstream is occupied to infer whether the dam is a barrier. It is essential to define what “occupied” means. Herein we use the simplest definition—at least one larval Pacific Lamprey.

Step 2: select the maximum acceptable probability of occupancy, if researchers do not document the species during sampling (Mo).

If researchers document the species, the probability that Pacific Lamprey occupy the area is one. If they do not document species, the probability that the area is occupied ranges from zero to one, since nondetection can occur regardless of sampling techniques and effort. However, increased sampling effort and increased capture efficiency of sampling methods reduce the probability that Pacific Lamprey occupy the area (with no detections) and increase the probability that the area is truly unoccupied. Before sampling, we suggest managers and other stakeholders discuss what they consider the maximum acceptable probability of occupancy if field crews do not document the species during sampling (Mo). For this approach, selecting a lower value for Mo results in higher confidence that the area is unoccupied if no individuals are documented by sampling, but also means higher sampling effort requirements.

Step 3: define an assumed detection probability for the target organism (d).

Herein, we define d as the probability that researchers detect the species in a sampling unit, given that the stream area of interest is occupied. Our definition for detection probability is different from that of standard occupancy approaches (MacKenzie et al. 2006) in that we do not sample repeatedly within units, so our d is a function of capture probability and density, but also distribution in the stream. Specifically,
formula
where U is the proportion of occupied sampling units, I is the number of individuals of the species in an occupied unit, and C is the capture probability of one individual. For our approach, an expected value of d must be assumed prior to sampling to calculate sampling effort. Ideally, the assumed value of d would be based on an empirical estimate calculated using similar field methods in an occupied stream with similar habitat. For example, assume 16 field units are sampled in an occupied stream with similar habitat and the species was detected in 12 units, the expected value of d could be estimated as the proportion of occupied units or 12 divided by 16 (i.e., 0.75).

Step 4: calculate required sampling effort.

If researchers do not document the species by sampling, they can calculate the expected probability of occupancy (P(F|Co)) using a model developed from Bayes' theorem and described by Peterson and Dunham (2003; also see MacKenzie et al. 2006; Jolley et al. 2012; Sethi and Benolkin 2013):
formula
where P(F) is the prior probability of presence and P(∼F) is the prior probability of absence (i.e., 1− P(F)). In general, we set P(F) and P(∼F) to 0.5 suggesting that there is equal probability that the stream is occupied or not occupied before sampling (i.e., uninformed), but environmental factors, historical occupancy, and rarity in the region could inform these values (Peterson and Dunham 2003; Wintle et al. 2012). P(Co|F) is the probability of not detecting the species when the area is unoccupied. P(Co|F) is often set to one, indicating that detecting the species in an unoccupied area is not possible. However, if species misidentification is possible, P(Co|F) could be set to less than one. Researchers can accurately identify larval Pacific Lamprey greater than about 60 mm total length by caudal pigmentation while smaller individuals are more difficult to differentiate, but can be identified using genetic markers (Goodman et al. 2009; Docker et al. 2016). P(Co|F) is the probability of not detecting the species in an occupied system and is a function of unit detection probability (i.e., d) and the number of interchangeable units sampled (n; i.e., effort). P(Co|F) is always 0–1 and is estimated as (1 − d)n. Thus, we can calculate a P(F|Co) curve as a function of different levels of n to identify the number of sampling units needed to assess the probability of occupancy, if the species is not documented. Figure 1 illustrates examples of P(F|Co) curves for different assumed values of d. The number of units to sample also depends on Mo (see Step 2). We include a script in Program R (R Core Team 2013) to calculate the P(F|Co) curve and to identify the number of units that need to be sampled to achieve Mo (Text S1, Supplemental Material).

Step 5: select sampling units.

The definition of a sampling unit could depend on multiple factors including, but not limited to, species and life stage, stream habitat, and field gear. We limit potential units to those in the third-order portions of the stream to help eliminate units in unsuitable habitat for larval Pacific Lamprey (i.e., small or seasonally dry portions) or inaccessible habitat to backpack electrofishing (i.e., deep or fast flowing). There are many sampling schemes, including purely random or random stratified. Herein, we use a generalized random-tessellated stratified (GRTS) approach to delineate points to use as sample units. The GRTS approach uses a reverse hierarchical ordering procedure to generate numerically ordered points that are random and spatially balanced (Stevens and Olsen 2004). We include a script in Program R to use GRTS to delineate points in the area of interest at an average rate of one point for every 500 m of stream (Text S2, Supplemental Material). Here we defined the GRTS points as a 50-m-long sample reach, a sample unit convention adopted from previous work used to assess Bull Trout Salvelinus confluentus occupancy in wadeable streams (USFWS 2008). If we are not able to sample a reach (due to safety concerns, lack of access, dewatered conditions, etc.), we replace it with the next lowest numbered reach; this does not violate the spatial balance. We suggest use of a spatially balanced design to ensure spatial coverage and improve precision when compared to simple random sampling, especially when a species exhibits a clumped distribution (Lawrence et al. 2015; Liermann et al. 2015; McGarvey et al. 2016), as observed for larval lampreys (Torgersen and Close 2004; Stone and Barndt 2005).

Step 6: conduct sampling.

Similar to sampling units, field sampling methods also depend on factors such as stream habitat and catchability of the species. Researchers have assessed larval Pacific Lamprey occupancy by backpack electrofishing (Dunham et al. 2013; Reid and Goodman 2015). Herein, we conducted backpack electrofishing with an AbP-2 electrofisher (ETS Electrofishing Systems, Madison, WI). This electrofisher produces two pulse frequencies: the primary output is pulsed direct current in a 3:1 pattern (every fourth pulse deleted) which stimulates larvae to emerge from the sediment; the secondary output is a higher-frequency standard direct current pulse (30 Hz) activated to induce muscle tetany once larvae have emerged (Weisser and Klar 1990; Bowen et al. 2003). This electrofisher was designed to capture larval lamprey (Weisser and Klar 1990) and capture probability averages ∼0.28, but is highly variable (Harris et al. 2016). Sampling can cease when all selected reaches are sampled or an occupancy state of one is confirmed.

Step 7: interpret sampling results into probabilistic occupancy conclusions.

Conclusions should refer to study objectives and assumptions and are probabilistic in nature. For example, “a larval Pacific Lamprey was identified during sampling; thus, the stream is occupied with a probability of one.” Alternatively, “zero Pacific Lamprey larvae were identified during sampling; thus, the expected maximum probability of occupancy is 0.05 at an assumed d of 0.4.”

Detection probability for larval lampreys

To examine expected values and variability in d among streams and to identify expected sampling effort for future studies in streams of unknown occupancy state, we estimated d and the P(F|Co) curves for eight occupied stream areas in the Pacific Northwest (Figure 2; Ostberg et al. 2019; Data S1, Supplemental Material). We examined the efficiency of our approach by examining the range in expected values of d and P(F|Co) curves among streams. Variability in d and the associated P(F|Co) curves elucidate implications of poor assumptions of d; most notably, selection of an expected value of d that is too high would result in an underestimate of the probability of occupancy, if the species was not documented. We sampled using our approach for 6–16 50-m reaches in each occupied stream. We included only third-order portions of each occupied stream considered accessible to Pacific Lamprey (i.e., downstream of known migration barriers). We estimated d using a binomial model for each stream separately (i.e., to examine for variation among streams) and then overall including data from all streams combined (i.e., to produce a median estimate). For each estimate of d, we calculated the P(F|Co) curve (Step 4: sampling effort). We estimated d and the P(F|Co) curves using Bayesian analysis methods with JAGS software (Plummer 2003) called from Program R. We used Package jagsUI with function autojags (Kellner 2017) for three chains with 2,000 adaption iterations, 5,000 burn-in iterations, and we saved enough iterations (increments of 25,000) to reach convergence as assessed by Rhat scores of 1.1 or less for all estimated parameters (Gelman and Hill 2007; Kéry and Schaub 2012). Priors for d were beta distributions with both shape parameters set to one (i.e., all were beta (1,1) distributions). We reported each expected value as the median of the posterior distribution and precision as the 95% credible interval (95% CI) on the posterior distribution.

Approach application

We applied our approach to assess if Balm Grove Dam is a complete barrier to upstream migration of Pacific Lamprey in Gales Creek, Oregon. Gales Creek is a third-order tributary of the Tualatin River. Pacific Lamprey occupy lower portions of Gales Creek and other streams in the Tualatin River basin (Schultz et al. 2016). However, Balm Grove Dam, located about 20 km upstream of the confluence, is a potential barrier to upstream migration and occupancy upstream of the dam is unknown. We assumed that the presence of larval Pacific Lamprey upstream of Balm Grove Dam would indicate that the dam was not an impediment to spawning migration for adults. We used empirical estimates of larval Pacific Lamprey detection probability from streams in Washington and Oregon (Data S1) to guide the selection of a detection probability value for Gales Creek.

Detection probability for larval lampreys

We estimated d and the P(F|Co) curves for Pacific Lamprey in eight streams in the Pacific Northwest (Figure 3; Data S1). Estimates of d ranged from 0.15 (95% CI: 0.02–0.41) to 0.94 (95% CI: 0.71–1.00). Ranges for 95% CI were generally large, but still did not overlap for all example systems suggesting that d differs among third-order streams for larval lamprey (Figure 3). Depending on d, we should sample 1–14 50-m reaches if we set Mo (i.e., maximum acceptable probability of occupancy, if researchers do not document the species during sampling) at 0.1 and 2–19 50-m reaches if we set Mo to 0.05. Including data from all streams, estimated detection probability for larval lamprey in Pacific Northwest streams was 0.70 (95% CI: 0.60–0.79; Figure 4). Assuming d is 0.70, we need to sample two 50-m reaches to reach an Mo of 0.1 and three 50-m reaches for an Mo of 0.05 (Figure 4; Text S1).

Approach application

Step 1: define the occupancy question.

Our example purpose was to evaluate if Balm Grove Dam was a barrier to upstream migration of Pacific Lamprey to aid management decisions in Gales Creek. We deconstructed this purpose into two specific occupancy questions we could address using our approach: 1) Is Gales Creek downstream of Balm Grove Dam occupied by Pacific Lamprey larvae?; and 2) Is Gales Creek upstream of Balm Grove Dam occupied by Pacific Lamprey larvae? We assumed that if we detected larvae downstream, but not upstream, we could use the probability that area upstream was occupied to infer or suggest the probability of passage upstream by migrating adults. We defined occupancy as one Pacific Lamprey larvae.

Step 2: select the maximum acceptable probability of occupancy, if researchers do not document the species during sampling (Mo).

We set Mo at 0.05 for demonstration purposes. Researchers must select the Mo for each study individually based on stakeholder input regarding the appropriate maximum acceptable probability of occupancy, if researchers do not document the species during sampling.

Step 3: define an assumed detection probability for the target organism (d).

We assumed d was 0.4 for Gales Creek. This value was substantially more conservative than the median estimate we produced for Pacific Lamprey (Figure 4). We assumed a conservative detection probability estimate because our examination of detection probability suggested variability in d among streams (Figure 3) and reduced upstream passage at Balm Grove Dam (during all or some years) could lead to lower density or a more patchy distribution of larvae than in other locations without a potential barrier.

Step 4: calculate required sampling effort.

We used inputs of 0.05 for Mo and 0.4 for d to calculate the expected P(F|Co) curve (Text S1). The model indicated that we should sample six 50-m reaches both downstream and upstream of Balm Grove Dam (see dashed lines in Figure 1).

Step 5: select sampling units.

We used GRTS to delineate sample points in Gales Creek (Data S2, Supplemental Material). The third-order portion of Gales Creek is just over 33.5 km in length, so we scripted Program R to delineate 67 sample points for an average rate of one point for every 500 m of creek (Text S2, Supplemental Material). We gave the six lowest numbered reaches below Balm Grove Dam and the six lowest numbered reaches above the dam the highest priority for sampling. We defined the sample points generated by GRTS as the downstream boundaries of the 50-m-long sample reaches, which is where we would begin electrofishing sampling for each reach.

Step 6: conduct sampling.

We sampled the six selected reaches in each area using electrofishing field methods described above. We stopped sampling in a reach if a larval Pacific Lamprey was documented.

Step 7: interpret sampling results into probabilistic occupancy conclusions.

We detected larval Pacific Lamprey (n = 33) in all six reaches downstream of Balm Grove Dam and zero of six reaches upstream of the dam. Pacific Lamprey occupy Gales Creek below Balm Grove Dam with a probability of one. Since we did not detect any individuals, the expected maximum probability of occupancy of Gales Creek upstream of Balm Grove Dam is the predefined Mo value of 0.05 at an assumed detection probability of 0.4. Our results support the suggestion that Balm Grove Dam is a barrier to upstream movement of adult Pacific Lamprey.

We developed a stepwise approach including sampling methods, effort needed, and unit selection, to help researchers identify the occupancy state of larval lamprey in a stream to support Pacific Lamprey management and conservation. Most occupancy methods focus on estimating the proportion of occupied sites in a larger occupied area of interest (MacKenzie et al. 2006). These occupancy studies require repeated sampling of some occupied sites over time to adjust for nondetection and to differentiate environmental patterns in occupancy from environmental patterns in detection. The main purpose of such studies is to understand what impacts occupancy and detection patterns across a landscape (MacKenzie et al. 2006; Benoit et al. 2018). In contrast, the goal of our approach is to delineate the sampling needed to meet a selected maximum probability of occupancy in a specific stream, if zero individuals are detected during sampling, without sampling in multiple streams. Researchers using the method identify the maximum level of effort needed and the actual sampling locations before sampling (i.e., in case zero individuals are detected), but may cease sampling as soon as they have identified the occupancy state as one (i.e., one individual is detected). Researchers can include previous information by modifying prior probabilities of occupancy or species misidentification, if needed (Peterson and Dunham 2003; Wintle et al. 2012). Although we have illustrated our approach for larval Pacific Lamprey sampled by backpack electrofishing in a stream, researchers could apply the general stepwise approach to other species and systems, although they must make careful consideration with regard to assumptions about detection probability and interpretation.

Our approach makes an a priori assumption about detection probability and interpretation should reflect that assumption. Our results suggest that detection probability for larval lamprey varies among streams and assuming different values for detection probability can affect the identified number of reaches to sample to assess the probability of occupancy, if the species is not documented (Figure 3). True detection probability is affected by capture probability, as well as species density and distribution in the stream. Electrofishing capture probability is affected by environmental factors (e.g., water temperature, turbidity, conductivity, etc.), sampling techniques, and personnel (Price and Peterson 2010; Benejam et al. 2012; Rodtka et al. 2015). By standardizing field sampling methods and seasonal periods, and by training field crews, researchers can reduce variability in capture efficiency. For example, we typically sample in summer and early fall, when water currents and depths are at their lowest and visibility is at its highest, to maximize electrofishing capture probability. Detection probability is also impacted by larval density and distribution. Adult Pacific Lamprey build redds in gravel and cobble substrates (Gunckel et al. 2009; Mayfield et al. 2014) and larvae prefer to burrow in fine sediments (Torgersen and Close 2004; Stone and Barndt 2005; Figure 5). Thus, quantity and distribution of gravel and fine sediments may affect larval density and distribution. Detection probability estimated by sampling in similar streams with known occupancy state of one can provide information about detection probability in a stream with unknown occupancy state. Given variability in distribution, habitat, and capture probability, as well as environmental and demographic stochasticity, evaluating effort needs over a range of potential detection probability values before sampling and assuming a conservative (i.e., low) value for detection probability may be optimal. Even assuming the lowest observed estimate of detection probability, researchers would need to sample only 19 units for the probability of occupancy to be not more than 0.05, if they detect no individuals. Sampling in up to 19 units would likely be practical (i.e., acceptably low level of effort in terms of time and money) as part of an assessment plan conducted to aid decisions about future development, translocation, or restoration projects in a stream. Research examining factors that affect detection probability would help inform effort in future studies.

Despite variability among streams, our results suggest that detection probability for Pacific Lamprey larvae associated with our approach is high for most occupied streams (Figure 3). Our Bayesian estimates of detection probability in Pacific Northwest streams ranged from 0.15 to 0.94 and the overall estimate including all streams was 0.70 (95% CI: 0.60–0.79). Our results suggest that, for many streams, researchers need to complete relatively little sampling to obtain a low (i.e., <0.05) expected probability of occupancy, if they do not document the species by sampling. Pacific Lamprey are highly fecund (Clemens et al. 2013) and larvae disperse in a mostly downstream direction (Quintella et al. 2005; Moser et al. 2015). Thus, larvae may be extensively distributed downstream of spawning areas if habitat is acceptable. In experimental studies, Liedtke et al. (2015) found that larval Pacific Lamprey burrowed less than 15 cm below the sediment surface and Harris et al. (2016) estimated average capture probability of our backpack electrofishing protocol at 0.28. As a result of biology, dispersal, and relatively high catchability of backpack electrofishing, detection probability for larval lamprey is usually high (Dunham et al. 2013; Reid and Goodman 2015; Ostberg et al. 2019).

We designed our approach to address questions about occupancy state of larval Pacific Lamprey to make informed decisions about restoration, translocation, passage, and land use in a stream (see Table 1). Our approach requires managers to assume a value for detection probability and to select the maximum acceptable probability of occupancy to ensure they achieve the level of certainty needed for the specific stream management objectives. Although the estimate of median detection probability is 0.70 (95% CI: 0.60–0.79), we recommend carefully considering the potential range for detection probability and assuming a conservative value; thus, the probability of occupancy will be no more than the maximum acceptable value, if researchers do not document the species during sampling. For example, dredging a stream bottom for navigation might only be acceptable if results suggest that the expected probability of occupancy by Pacific Lamprey is less than 0.01 at a conservative detection probability of 0.1; this would require sampling 44 50-m units. Alternatively, installation of a passage structure might be considered if the probability of occupancy is one downstream of the barrier, but only 0.1 upstream of the barrier at a detection probability of 0.3; this would require sampling seven 50-m units. We did not collect Pacific Lamprey larvae above Balm Grove Dam; thus, we conclude that the maximum probability of occupancy upstream is the selected Mo value of 0.05 at the assumed detection probability of 0.4. Our results suggest that Balm Grove Dam is a barrier to upstream migration of adult Pacific Lamprey and managers can use this information to evaluate the potential benefits of dam removal or construction of a lamprey passage structure in Gales Creek. Although we evaluated specific field methods and estimates of detection probability for larval lamprey in streams, researchers could apply the overall stepwise approach to other species and systems, although the researchers may need to modify field methods and estimates of detection probability. Ultimately, this approach allows users to design a sampling plan to assess the occupancy state of an area that incorporates the potential for nondetection to meet project-specific targets to guide species conservation and area management projects.

Please note: The Journal of Fish and Wildlife Management is not responsible for the content or functionality of any supplemental material. Queries should be directed to the corresponding author for the article.

Data S1. Data used to estimate detection probability of larval Pacific Lamprey Entosphenus tridentatus in the Pacific Northwest, by stream name and river basin. Data include the number of 50-m reaches we sampled by electrofishing in each stream (R) and the number of 50-m reaches from which we identified at least one Pacific Lamprey larvae (L). We conducted sampling 2008–2016 using the approach (and all associated methods), as described in the text. The eight streams sampled were Washougal River, Gales Creek, Cedar Creek, Newaukum River, Skookumchuck River, Black River, Wynoochee River, and Wishkah River. Figure 2 is a map illustrating the geographical locations of the sampled streams.

Found at DOI: https://doi.org/10.3996/112018-JFWM-107.S1 (16 KB DOCX).

Data S2. Shapefiles (zipped) for the third-order portion of Gales Creek, Oregon, that we used to order reaches for sampling both below and above Balm Grove Dam. Data for Gales Creek (projected: UTM NAD83 Zone 10, meters) are from a stream layer in the National Hydrography Dataset.

Found at DOI: https://doi.org/10.3996/112018-JFWM-107.S2 (231 KB ZIP); also available at https://www.usgs.gov/core-science-systems/ngp/national-hydrography/national-hydrography-dataset?qt-science_support_page_related_con=0#qt-science_support_page_related_con.

Text S1. Code to calculate the probability of occupancy curve and to identify the number of units that need to be sampled to meet a selected maximum acceptable probability of occupancy, in case a species is not documented by sampling. The code is a script for Program R. The user must specify values for INPUT PARAMETERS. Current values for INPUT PARAMETERS are those we used to estimate the number of sampling units needed to assess Balm Grove Dam (on Gales Creek, Oregon) as a potential barrier to upstream migration by Pacific Lamprey Entosphenus tridentatus. BLACK LINE indicates the probability of occupancy, if the species is not documented. BLUE LINE indicates the number of units (i.e., 50-m reaches) to sample. RED LINE indicates the maximum acceptable probability of occupancy, if researchers do not document the species.

Found at DOI: https://doi.org/10.3996/112018-JFWM-107.S3 (3 KB R).

Text S2. Code to order and provide coordinates and shapefiles for stream reaches by generalized random-tessellated stratified (GRTS) approach. User must have linear shape files (zipped) for stream of interest and label files accordingly. User must know the total length of the stream area of interest in kilometers (KM). The code is a script for Program R. User must install and run specified R libraries. Current values and labels in INPUT SECTION are those we used to order sampling reaches needed to assess Balm Grove Dam (on Gales Creek, Oregon) as a potential barrier to upstream migration by Pacific Lamprey Entosphenus tridentatus. To run this R script, Data S2.zip (Data S2, Supplemental Material) must be included in the working directory file, along with this R script.

Found at DOI: https://doi.org/10.3996/112018-JFWM-107.S4 (3 KB R).

Reference S1. Liedtke TL, Weiland LK, Mesa MG. 2015. Vulnerability of larval lamprey to Columbia River hydropower system operations—effects of dewatering on larval lamprey movements and survival. U.S. Geological Survey Open-File Report 2015-1157, Reston, Virginia.

Found at DOI: https://doi.org/10.3996/112018-JFWM-107.S5 (1.04 MB PDF); also available at https://pubs.usgs.gov/of/2015/1157/ofr20151157.pdf

Reference S2. [USFWS] U.S. Fish and Wildlife Service. 2008. Bull Trout recovery: monitoring and evaluation guidance. Report prepared for the U.S. Fish and Wildlife Service by the Bull Trout Recovery and Monitoring Technical Group (RMEG). Portland, Oregon.

Found at DOI: https://doi.org/10.3996/112018-JFWM-107.S6 (3.33 MB PDF); also available at https://www.fws.gov/columbiariver/publications/080310_M&E_guidance_FINAL_2.pdf.

We thank Eric Forbes, Andy Johnsen, Maureen Kavanagh, Ken Muir, April Olbrich, Hayley Potter, Howard Schaller, Brook Silver, Dan Sulak, Christina Wang, and Cal Yonce for help with study design or substantial field sampling support. Brian Davis and David Hines provided assistance with creating R code and Erin Butts produced the map. Helpful input to previous drafts of this manuscript was provided by Judith Barkstedt, William Brignon, Jason Dunham, Ann Grote, and by multiple people associated with the journal review process. Funding was provided by the U.S. Fish and Wildlife Service Columbia River Fish and Wildlife Conservation and Mid-Columbia Fish and Wildlife Conservation Offices and Bonneville Power Administration under Project Number 200001400. References to trade names do not imply endorsement by the U.S. Government. The findings and conclusions in this manuscript are those of the authors and do not necessarily represent the views of the U.S. Fish and Wildlife Service.

Any use of trade, product, website or firm names in this publication is for descriptive purposes only and does not imply endorsement by the U.S. Government.

Beamish
RJ.
1980
.
Adult biology of river lamprey (Lampetra ayresi) and the Pacific Lamprey (Lampetra tridentata) from the Pacific Coast of Canada
.
Canadian Journal of Fisheries and Aquatic Sciences
37
:
1906
1923
.
Benejam
L,
Alcaraz
C,
Benito
J,
Caiola
N,
Casals
F,
Maceda-Viega
A,
deSostoa
A,
Garcia-Berthou
E.
2012
.
Fish catchability and comparison of four electrofishing crews in Mediterranean streams
.
Fisheries Research
123–124
:
9
15
.
Benoit
D,
Jackson
DA,
Ridgeway
MS.
2018
.
Assessing the impacts of imperfect detection on estimates of diversity and community structure through multispecies occupancy modeling
.
Ecology and Evolution
8
:
4676
4684
.
Bowen
AK,
Weisser
JW,
Bergstedt
RA,
Famoye
F.
2003
.
Response of larval sea lampreys (Petromyzon marinus) to pulsed DC electrical stimuli in laboratory experiments
.
Journal of Great Lakes Research
29
(Supplement 1)
:
174
182
.
Clemens
BJ,
van de Wetering
S,
Sower
SA,
Schreck
CB.
2013
.
Maturation characteristics and life-history strategies of the Pacific Lamprey, Entosphenus tridentatus
.
Canadian Journal of Zoology
91
:
775
788
.
Clemens
BJ,
Weitkamp
L,
Siwicke
K,
Wade
J,
Harris
J,
Hess
J,
Porter
L,
Parker
K,
Sutton
TM,
Orlov
AM.
2019
.
Marine biology of the pacific lamprey Entosphenus tridentatus
.
Reviews in Fish Biology and Fisheries
29
:
767
788
.
Close
DA,
Fitzpatrick
MS,
Li
HW.
2002
.
The ecological and cultural importance of a species at risk of extinction, Pacific Lamprey
.
Fisheries
27
(7)
:
19
25
.
Docker
MF,
Silver
GS,
Jolley
JC,
Spice
EK.
2016
.
Simple genetic assay distinguishes lamprey genera Entosphenus and Lampetra: comparison with existing genetic and morphological methods
.
North American Journal of Fisheries Management
36
:
780
787
.
Dunham
JB,
Chelgren
ND,
Heck
MP,
Clark
SM.
2013
.
Comparison of electrofishing techniques to detect larval lamprey in wadeable streams in the Pacific Northwest
.
North American Journal of Fisheries Management
33
:
1149
1155
.
Gelman
A,
Hill
J.
2007
.
Data analysis using regression and multilevel/hierarchical models
.
New York
:
Cambridge University Press
.
Goodman
DH,
Kinzinger
AP,
Reid
SB,
Docker
MF.
2009
.
Morphological diagnosis of Entosphenus and Lampetra ammocoetes (Petromyzontidae) in Washington, Oregon, and California
.
Pages
223
232
in
Brown
LR,
SD,
Chase
Mesa
MG,
Beamish
RJ,
Moyle
PB,
editors.
Biology, management, and conservation of lampreys in North America
.
Bethesda, Maryland
:
American Fisheries Society
.
Symposium 72.
Gunckel
SL,
Jones
KK,
Jacobs
SE.
2009
.
Spawning distribution and habitat use of adult Pacific and Western Brook Lampreys in Smith River, Oregon
.
Pages
173
189
in
Brown
LR,
SD,
Chase
Mesa
MG,
Beamish
RJ,
Moyle
PB,
editors.
Biology, management, and conservation of lampreys in North America
.
Bethesda, Maryland
:
American Fisheries Society
.
Symposium 72.
Harris
JE,
Jolley
JC,
Silver
GS,
Yuen
H,
Whitesel
TA.
2016
.
An experimental evaluation of electrofishing catchability and catch-depletion abundance estimates of larval lamprey in a wadeable stream: use of a hierarchical approach
.
Transactions of the American Fisheries Society
145
:
1006
1017
.
Jolley
JC,
Silver
GS,
Whitesel
TA.
2012
.
Occupancy and detection of larval Pacific Lampreys and Lampetra spp. in a large river: the Lower Willamette River
.
Transactions of the American Fisheries Society
141
:
305
312
.
Kellner
K.
2007
.
Package ‘jagsUI'
.
A wrapper around ‘rjags' to streamline ‘JAGS' analyses. Available: https://cran.r-project.org/web/packages/jagsUI/jagsUI.pdf (January 2020).
Kéry
M,
Schaub
M.
2012
.
Bayesian population analysis using WinBUGS: a hierarchical perspective
.
Waltham, Massachusetts
:
Academic Press
.
Lawrence
E,
Hayes
KR,
Lucieer
VL,
Nichol
SL,
Dambacher
JM,
Hill
NA,
Barrett
N,
Kool
J,
Siwabessy
J.
2015
.
Mapping habitats and developing baselines in offshore marine reserves with little prior knowledge: A critical evaluation of a new approach
.
PLoS One
10
:
e0141051
.
Liedtke
TL,
Weiland
LK,
Mesa
MG.
2015
.
Vulnerability of larval lamprey to Columbia River hydropower system operations—effects of dewatering on larval lamprey movements and survival
.
U.S. Geological Survey Open-File Report 2015-1157
,
Reston, Virginia
(see Supplemental Material, Reference S1).
Liermann
MC,
Rawding
D,
Pess
GR,
Glaser
B.
2015
.
The spatial distribution of salmon and steelhead redds and optimal sampling design
.
Canadian Journal of Fisheries and Aquatic Sciences
72
:
434
446
.
MacKenzie
DI,
Nichols
JD,
Royle
JA,
Pollock
KH,
Bailey
LL,
Hines
JE.
2006
.
Occupancy estimation and modeling
.
Boston
:
Elsevier
.
Mayfield
MP,
Schultz
LD,
Wyss
LA,
Clemens
BJ,
Schreck
CB.
2014
.
Spawning patterns of Pacific Lamprey in tributaries to the Willamette River, Oregon
.
Transactions of the American Fisheries Society
143
:
1544
1554
.
McGarvey
R,
Burch
P,
Matthews
JM.
2016
.
Precision of systematic and random sampling in clustered populations: habitat patches and aggregated organisms
.
Ecological Applications
26
:
233
248
.
Moser
ML,
Jackson
AD,
Lucas
MC,
Mueller
RP.
2015
.
Behavior and potential threats to survival of migrating lamprey ammocoetes and macrophthalmia
.
Reviews in Fish Biology and Fisheries
25
:
103
116
.
Noble
M,
Duncan
P,
Perry
D,
Prosper
K,
Rose
D,
Schnierer
S,
Tipa
G,
Williams
E,
Woods
R,
Pittock
J.
2016
.
Culturally significant fisheries: keystones for management of freshwater social-ecological systems
.
Ecology and Society
21
:
22
.
Ostberg
CO,
Chase
DM,
Hoy
MS,
Duda
JJ,
Hayes
MC,
Jolley
JC,
Silver
GS,
Cook-Tabor
C.
2019
.
Evaluation of environmental DNA surveys for identifying occupancy and spatial distribution of Pacific Lamprey (Entosphenus tridentatus) and Lampetra spp. in a Washington coast watershed
.
Environmental DNA
1
:
131
143
.
Peterson
J,
Dunham
JB.
2003
.
Combining inferences from models of capture efficiency, detectability, and suitable habitat to classify landscapes for conservation of threatened Bull Trout
.
Conservation Biology
17
:
1070
1077
.
Plummer
M.
2003
.
JAGS: a program for analysis of Bayesian graphical models using Gibbs sampling
.
In
Hornik
K,
Leisch
F,
Zeileis
A,
editors.
Proceedings of the 3rd International Workshop on Distributed Statistical Computing
.
Vienna, Austria
.
Price
AL,
Peterson
JT.
2010
.
Estimation and modeling of electrofishing capture efficiency for fishes in wadeable warmwater streams
.
North American Journal of Fisheries Management
30
:
481
498
.
Quintella
BR,
Andrade
NO,
Esphanhol
R,
Almeida
PR.
2005
.
The use of PIT telemetry to study movements of ammocoetes and metamorphosing sea lampreys in river beds
.
Journal of Fish Biology
66
:
97
106
.
R Core Team
.
2013
.
R: A language and environment for statistical computing
.
Vienna
:
R Foundation for Statistical Computing
.
Available https://www.r-project.org/ (January 2020).
Reid
SB,
Goodman
DH.
2015
.
Detectability of Pacific Lamprey occupancy in western drainages: implications for distribution surveys
.
Transactions of the American Fisheries Society
144
:
315
322
.
Riemer
SD,
Wright
BE,
Brown
RF.
2011
.
Food habits of steller seas lions (Eumetopias jubatus) off Oregon and northern California, 1986–2007
.
Fishery Bulletin
109
:
369
381
.
Rodtka
MC,
Judd
CS,
Aku
PKM,
Fitzsimmons
KM.
2015
.
Estimating occupancy and detection probability of juvenile Bull Trout using backpack electrofishing gear in a west-central Alberta watershed
.
Canadian Journal of Fisheries and Aquatic Sciences
72
:
742
750
.
Schultz
LD,
Mayfield
MP,
Sheoships
GT,
Wyss
LA,
Clemens
BJ,
Whitlock
SL,
Schreck
CB.
2016
.
Role of large- and fine-scale variables in predicting catch rates of larval Pacific Lamprey in the Willamette Basin, Oregon
.
Ecology of Freshwater Fish
25
:
261
271
.
Sethi
SA,
Benolkin
E.
2013
.
Detection efficiency and habitat use to inform inventory and monitoring efforts: juvenile coho salmon in the Knik River basin, Alaska
.
Ecology of Freshwater Fish
22
:
398
411
.
Stevens
DL,
Olsen
AR.
2004
.
Spatially balanced sampling of natural resources
.
Journal of the American Statistical Association
99
:
262
278
.
Stone
J,
Barndt
S.
2005
.
Spatial distribution and habitat use of Pacific Lamprey (Lampetra tridentata) ammocoetes in a western Washington stream
.
Journal of Freshwater Ecology
20
:
171
185
.
Torgersen
CE,
Close
DA.
2004
.
Influence of habitat heterogeneity on the distribution of larval Pacific Lamprey (Lampetra tridentata) at two spatial scales
.
Freshwater Biology
49
:
614
630
.
[USFWS] U.S. Fish and Wildlife Service
.
2008
.
Bull Trout recovery: monitoring and evaluation guidance
.
Report prepared for the U.S. Fish and Wildlife Service by the Bull Trout Recovery and Monitoring Technical Group (RMEG).
Portland, Oregon
(see Supplemental Material, Reference S2).
Wang
C,
Schaller
H.
2015
.
Conserving Pacific Lamprey through collaborative efforts
.
Fisheries
40
:
72
79
.
Weisser
JW,
Klar
GT.
1990
.
Electric fishing for sea lampreys (Petromyzon marinus) in the Great Lakes region of North America
.
Pages
59
64
in
Cowx
IG,
editor.
Developments in electric fishing
.
Oxford, UK
:
Fishing News Books
.
Wintle
BA,
Walshe
TV,
Parris
KM,
McCarthy
MA.
2012
.
Designing occupancy surveys and interpreting non-detection when observations are imperfect
.
Diversity and Distributions
18
:
417
424
.

Author notes

Citation: Harris JE, Silver GS, Jolley JC, Nelle RD, Whitesel TA. 2020. A stepwise approach to assess the occupancy state of larval lampreys in streams. Journal of Fish and Wildlife Management 11(1):226–237; e1944-687X. https://doi.org/10.3996/112018-JFWM-107

Competing Interests

The findings and conclusions in this article are those of the author(s) and do not necessarily represent the views of the U.S. Fish and Wildlife Service.