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Title: Quantifying input data drift in medical machine learning models by detecting change-points in time-series data
Devices enabled by artificial intelligence (AI) and machine learning (ML) are being introduced for clinical use at an accelerating pace. In a dynamic clinical environment, these devices may encounter conditions different from those they were developed for. The statistical data mismatch between training/initial testing and production is often referred to as data drift. Detecting and quantifying data drift is significant for ensuring that AI model performs as expected in clinical environments. A drift detector signals when a corrective action is needed if the performance changes. In this study, we investigate how a change in the performance of an AI model due to data drift can be detected and quantified using a cumulative sum (CUSUM) control chart. To study the properties of CUSUM, we first simulate different scenarios that change the performance of an AI model. We simulate a sudden change in the mean of the performance metric at a change-point (change day) in time. The task is to quickly detect the change while providing few false-alarms before the change-point, which may be caused by the statistical variation of the performance metric over time. Subsequently, we simulate data drift by denoising the Emory Breast Imaging Dataset (EMBED) after a pre-defined change-point. We detect the change-point by studying the pre- and post-change specificity of a mammographic CAD algorithm. Our results indicate that with the appropriate choice of parameters, CUSUM is able to quickly detect relatively small drifts with a small number of false-positive alarms.  more » « less
Award ID(s):
2326034
PAR ID:
10539737
Author(s) / Creator(s):
; ; ; ; ; ; ;
Editor(s):
Astley, Susan M; Chen, Weijie
Publisher / Repository:
SPIE
Date Published:
ISBN:
9781510671584
Page Range / eLocation ID:
11
Format(s):
Medium: X
Location:
San Diego, United States
Sponsoring Org:
National Science Foundation
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