Visual line transect (VLT) surveys are central to the monitoring and study of marine mammals. However, for cryptic species such as deep diving cetaceans VLT surveys alone suffer from problems of low sample sizes and availability bias where animals below the surface are not available to be detected. The advent of passive acoustic monitoring (PAM) technology offers important opportunities to observe deep diving cetaceans but statistical challenges remain particularly when trying to integrate VLT and PAM data. Herein, we present a general framework to combine these data streams to estimate abundance when both surveys are conducted simultaneously. Secondarily, our approach can also be used to derive an estimate of availability bias. We outline three methods that vary in complexity and data requirements which are (1) a simple distance sampling (DS) method that treats the two datasets independently (), (2) a fully integrated approach that applies a capture-mark recapture (CMR) analysis to the PAM data () and (3) a hybrid approach that requires only a subset of the PAM CMR data (). To evaluate their performance, we use simulations based on known diving and vocalizing behavior of sperm whales (). As a case study, we applied the to data from a shipboard survey of sperm whales and compared estimates to a VLT only analysis. Simulation results demonstrated that the and reduced bias by >90% for both abundance and availability bias in comparison to the simpler . Overall, the was the least biased and most precise. For the case study, our application of the to the sperm whale dataset produced estimates of abundance and availability bias that were comparable to estimates from the VLT only analysis but with considerably higher precision. Integrating multiple sources of data is an important goal with clear benefits. As a step towards that goal we have developed a novel framework. Results from this study are promising although challenges still remain. Future work may focus on applying this method to other deep-diving species and comparing the proposed method to other statistical approaches that aim to combine information from multiple data sources.
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http://dx.doi.org/10.7717/peerj.15850 | DOI Listing |
Front Vet Sci
December 2024
Department of Biological Safety, German Federal Institute for Risk Assessment (BfR), Berlin, Germany.
spp. and hepatitis E virus (HEV) are significant foodborne zoonotic pathogens that impact the health of livestock, farmers, and the general public. This study aimed to identify biosecurity measures (BSMs) against these pathogens on swine farms in Europe, the United States, and Canada.
View Article and Find Full Text PDFEur Phys J C Part Fields
January 2025
MaLGa-DIBRIS, University of Genoa, Genoa, Italy.
In this work, we address the question of how to enhance signal-agnostic searches by leveraging multiple testing strategies. Specifically, we consider hypothesis tests relying on machine learning, where model selection can introduce a bias towards specific families of new physics signals. Focusing on the New Physics Learning Machine, a methodology to perform a signal-agnostic likelihood-ratio test, we explore a number of approaches to multiple testing, such as combining -values and aggregating test statistics.
View Article and Find Full Text PDFAm J Epidemiol
January 2025
Center for Public Health Law Research, Beasley School of Law, Temple University, Philadelphia, Pennsylvania.
Epidemiologists are increasingly asking questions about the effects of policies on health and health disparities, generally using quasi-experimental methods. Researchers have developed a burgeoning body of rigorous methodological work focused on addressing potential inference challenges arising from modeling choices, study design, data availability, and common sources of bias in policy evaluations using observational data. However, epidemiologists have paid less attention to measurement and operationalization of policy exposures.
View Article and Find Full Text PDFSci Rep
January 2025
College of Mathematics and Systems Science, Xinjiang University, Urumqi , 830046, China.
ν-one-class support vector classification (ν-OCSVC) has garnered significant attention for its remarkable performance in handling single-class classification and anomaly detection. Nonetheless, the model does not yield a unique decision boundary, and potentially compromises learning performance when the training data is contaminated by some outliers or mislabeled observations. This paper presents a novel C-parameter version of bounded one-class support vector classification (C-BOCSVC) to determine a unique decision boundary.
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