Large and densely sampled sensor datasets can contain a range of complex stochastic structures that are difficult to accommodate in conventional linear models. This can confound attempts to build a more complete picture of an animal's behavior by aggregating information across multiple asynchronous sensor platforms. The Livestock Informatics Toolkit (LIT) has been developed in R to better facilitate knowledge discovery of complex behavioral patterns across Precision Livestock Farming (PLF) data streams using novel unsupervised machine learning and information theoretic approaches. The utility of this analytical pipeline is demonstrated using data from a 6-month feed trial conducted on a closed herd of 185 mix-parity organic dairy cows. Insights into the tradeoffs between behaviors in time budgets acquired from ear tag accelerometer records were improved by augmenting conventional hierarchical clustering techniques with a novel simulation-based approach designed to mimic the complex error structures of sensor data. These simulations were then repurposed to compress the information in this data stream into robust empirically-determined encodings using a novel pruning algorithm. Nonparametric and semiparametric tests using mutual and pointwise information subsequently revealed complex nonlinear associations between encodings of overall time budgets and the order that cows entered the parlor to be milked.
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http://dx.doi.org/10.3390/s22010001 | DOI Listing |
Biomolecules
December 2024
Institute of Life Sciences & Resources, Department of Food Science and Biotechnology, Kyung Hee University, Yongin 17104, Republic of Korea.
This study introduces an innovative on-site diagnostic method for rapidly detecting the / complex (SBSEC), crucial for livestock health and food safety. Through a comprehensive genomic analysis of 206 genomes, this study identified genetic markers that improved classification and addressed misclassifications, particularly in genomes labeled and . These markers were integrated into a portable quantitative polymerase chain reaction (qPCR) that can detect SBSEC species with high sensitivity (down to 10 or 10 colony-forming units/mL).
View Article and Find Full Text PDFAnim Front
December 2024
Institute for Data Science and Informatics, University of Missouri, Columbia, MO 65211, USA.
J Ayurveda Integr Med
December 2024
The University of Trans-Disciplinary Health Sciences and Technology (TDU), Bangalore, India. Electronic address:
The scope of the emerging field of Ayurvedic-biology visualized thus far is confined to studies on dimensions pertaining to clinical and experimental pharmacology, basic trans-disciplinary science and drug design. However, given the multiple facets of classical Ayurveda knowledge system, its application in the field of organic agriculture perhaps also needs to be urgently explored. The urgency is due to the growing public acceptance of Ayurveda as a preferred clinical choice for well-being and disease management.
View Article and Find Full Text PDFBrief Bioinform
November 2024
Agricultural Bioinformatics Key Laboratory of Hubei Province, Huazhong Agricultural University, No. 1 Shizishan Street, Hongshan District, Wuhan 430070, China.
Advances in three-dimensional (3D) genomics have revealed the spatial characteristics of chromatin interactions in gene expression regulation, which is crucial for understanding molecular mechanisms in biological processes. High-throughput technologies like ChIA-PET, Hi-C, and their derivatives methods have greatly enhanced our knowledge of 3D chromatin architecture. However, the chromatin interaction mechanisms remain largely unexplored.
View Article and Find Full Text PDFBMC Genomics
December 2024
Institute of Pig Breeding and Agroindustrial Production, National Academy of Agrarian Sciences of Ukraine, 1 Shvedska Mohyla St, Poltava, 36013, Ukraine.
Background: Trends in the development of genetic markers for the purposes of genomic and marker-assisted selection primarily focus on identifying causative polymorphisms. Using these polymorphisms as markers enables a more accurate association between genotype and phenotype. Bioinformatic analysis allows calculating the impact of missense polymorphisms on the structural and functional characteristics of proteins, which makes it promising for identifying causative polymorphisms.
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