Object Detection as an Aid for Locating the Prostate in Surface-Based Abdominal Ultrasound Images

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Abstract

Automatic object detection is increasingly used in the medical field to great effect. It can be used to enhance clinical workflows before, during, and after diagnosis of various conditions. One example is prostate detection and size estimation, which can aid in triaging patients for prostate cancer through risk-stratification using prostate-specific antigen density. In this paper, a baseline prostate detection framework is presented, highlighting that current state-of-the-art object detections models can detect the prostate in difficult to interpret surface-based ultrasound images with high accuracy. A 5-fold cross-validation study returned intersection-over-union, precision, recall, F1, and average-precision values above 𝟎.𝟕 with real-time capabilities possible. Additionally, a simple size calculation based on the detection results shows high correlation with ground truth measurements, with Pearson Correlation Coefficients ranging from 𝟎.𝟓 to 𝟎.𝟖 for prostate volume estimates. These findings will contribute to the development of a real-time prostate detection and size estimation platform prostate cancer risk-stratification.

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