Lesion-based bone metastasis detection in chest bone scintigraphy images of prostate cancer patients using pre-train, negative mining, and deep learning

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Abstract

This study aimed to explore efficient ways to diagnose bone metastasis early using bone scintigraphy images through negative mining, pre-training, the convolutional neural network, and deep learning. We studied 205 prostate cancer patients and 371 breast cancer patients and used bone scintigraphy data from breast cancer patients to pre-train a YOLO v4 with a false-positive reduction strategy. With the pre-trained model, transferred learning was applied to prostate cancer patients to build a model to detect and identify metastasis locations using bone scintigraphy. Ten-fold cross validation was conducted. The mean sensitivity and precision rates for bone metastasis location detection and classification (lesion-based) in the chests of prostate patients were 0.72 ± 0.04 and 0.90 ± 0.04, respectively. The mean sensitivity and specificity rates for bone metastasis classification (patient-based) in the chests of prostate patients were 0.94 ± 0.09 and 0.92 ± 0.09, respectively. The developed system has the potential to provide pre-diagnostic reports to aid in physicians’ final decisions.

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Cheng, D. C., Hsieh, T. C., Yen, K. Y., & Kao, C. H. (2021). Lesion-based bone metastasis detection in chest bone scintigraphy images of prostate cancer patients using pre-train, negative mining, and deep learning. Diagnostics, 11(3). https://doi.org/10.3390/diagnostics11030518

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