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Dissertation defense, April 4: John Ringer

March 31, 2025

Student Name: John Ringer
Program: MS Computer Science
Date: Friday 4/4/25
Time: 2:00 pm
Place: HSC-IDTC-2135 conf room
Committee Chair: Dr. Xin Chen

"A Computational Method for Detecting Compound Promiscuity in Early-Stage Pharmaceutical Discovery"

by John Ringer

B.S., Computer Science, University of New Mexico, 2023
M.S., Computer Science, University of New Mexico, 2025

Abstract

Modern drug discovery and chemical biology research relies heavily on analyzing bioassay data. One of the many challenges in bioassay data analysis is identifying false trails, i.e., chemical compounds which initially appear to have desirable activity but are found to be problematic upon further investigation. Badapple (the BioAssay-Data Associative Promiscuity Pattern Learning Engine) was created over ten years ago to help researchers identify promiscuous compounds and thus avoid a common source of these false trails. Through an effort involving software engineering, cheminformatics, and biomedical data science we have developed Badapple 2.0, which incorporates updated assay records and expanded data semantics. The expanded semantics offer additional insights into Badapple’s predictions and have supported novel, in-depth analyses which demonstrate the comprehensiveness of its data. Badapple 2.0 was developed as part of an ongoing anti-alphaviral discovery effort, and has high potential for improving the efficiency of other early-stage drug discovery projects.