The described method is accomplished by using a dynamic locus and sample specific analytical threshold and a machine learning-derived probabilistic artifact detection model. The system produced an allele detection accuracy of 97.2 percent, an 11.4-percent increase from the lowest static threshold (50 RFU), with a low incidence of incorrectly identified artifacts (0.79 percent). This adaptive method outperformed static thresholds in the retention of allelic information content at minimal cost. (publisher abstract modified)
A Hybrid Approach to Increase the Informedness of CE-based Data Using Locus-Specific Thresholding and Machine Learning
NCJ Number
253320
Journal
Forensic Science International-Genetics Volume: 35 Dated: July 2018 Pages: 26-37
Date Published
July 2018
Length
12 pages
Annotation
This article describes a method that is able to collectively minimize the incorrect detection of non-allelic artifacts (false positives) and the threshold-induced dropout of true allelic information (false negatives) by accounting for baseline variability across instrument runs, samples, capillaries, dye-channels, injection times, and voltage that is unable to adapt, leading to a loss of allelic information that exists below the threshold.
Abstract