Date of Award
8-2025
Document Type
Thesis
Degree Name
Master of Science
Degree Discipline
Computer Science
Abstract
In this thesis, we made a complete dual-domain investigation using a machine learning approach into two different scientific areas which were epigenetic analysis of seal species and pore identification in the work of additive manufacturing. The study showcased the flexibility and strength of modern computational tools in addressing complicated issues in various biological and industrial systems. We further investigated the epigenetics by using the Bayesian Neural Network and other machine learning methods to conduct a study on the DNA methylation pattern within three pinniped species (the northern elephant seal, Hawaiian monk seal, and Weddell seal) with perfect precision on species type identification and tissue origin differences. In the manufacturing field, we proposed U-SAMNet, an uncertainty-aware self-attention multi-task network, for the pore detection in Additive Manufacturing, conveying 99.83% accuracy and 91.11% F1-score in an efficient manner. The cross-domain comparison showed several shared challenges, such as the data imbalance, uncertainty quantification, and the requirement to design a robust pre-processing pipeline. In addition, this work introduced new methods to two different fields and it showed the potential translation of machine learning to scientific practice.
Index Terms: Additive manufacturing, Bayesian neural networks, DNA methylation, epigenetics, machine learning, multi-task learning, uncertainty quantification.
Committee Chair/Advisor
Noushin Ghaffari
Committee Member
Mohsen Taheri Andani
Committee Member
Lin Li
Committee Member
Md Shuvo
Publisher
Prairie View A&M University
Rights
© 2021 Prairie View A & M University
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
Date of Digitization
09/08/2025
Contributing Institution
J. B . Coleman Library
City of Publication
Prairie View
MIME Type
Application/PDF
Recommended Citation
Roy, P. (2025). Computational Learning Across Biological And Industrial Systems: Bayesian And Segmentation Models For Epigenomic And Manufacturing Data. Retrieved from https://digitalcommons.pvamu.edu/pvamu-theses/1576