Decision Support AI for Breast Cancer: Journal of Digital Imaging

Impact of Data Presentation on Physician Performance Utilizing Artificial Intelligence-Based Computer-Aided Diagnosis and Decision Support Systems

October 15, 2018

Authors: L. Barinov, A. Jairaj, M. Becker, S Seymour, E. Lee, A. Schram, E. Lane, A. Goldszal, D. Quigley, L. Paster

Abstract

Ultrasound (US) is a valuable imaging modality used to detect primary breast malignancy. However, radiologists have a limited ability to distinguish between benign and malignant lesions on US, leading to false-positive and false-negative results, which limit the positive predictive value of lesions sent for biopsy (PPV3) and specificity. A recent study demonstrated that incorporating an AI-based decision support (DS) system into US image analysis could help improve US diagnostic performance. While the DS system is promising, its efficacy in terms of its impact also needs to be measured when integrated into existing clinical workflows. The current study evaluates workflow schemas for DS integration and its impact on diagnostic accuracy. The impact on two different reading methodologies, sequential and independent, was assessed. This study demonstrates significant accuracy differences between the two workflow schemas as measured by area under the receiver operating curve (AUC), as well as inter-operator variability differences as measured by Kendall’s tau-b. This evaluation has practical implications on the utilization of such technologies in diagnostic environments as compared to previous studies.

Conclusion

We have been able to demonstrate that reader workflow can significantly affect clinical performance when incorporating AI-based decision support tools. This evaluation has novel practical implications on the utilization of such technologies in diagnostic environments as compared to previous studies which have concluded an effective equivalence between these two reading paradigms. Independent reads (concurrent reads) have shown dramatic shifts in reader performance and inter-operator variability as compared to either control reads or sequential reads. The evidence provided in this study can be used to impact both study design when demonstrating efficacy of new diagnostic decision support tools, as well as their implementation in practical environments.

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