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KMID : 1001020190170020110
Journal of Urologic Oncology
2019 Volume.17 No. 2 p.110 ~ p.117
Machine Learning Approaches for the Prediction of Prostate Cancer according to Age and the Prostate-Specific Antigen Level
Lee Jae-Geun

Yang Seung-Woo
Lee Seung-Hee
Hyon Yun-Kyong
Kim Jin-Bum
Jin Long
Lee Ji-Yong
Park Jong-Mok
Ha Tae-Young
Shin Ju-Hyun
Lim Jae-Sung
Na Yong-Gil
Song Ki-Hak
Abstract
Purpose: The aim of this study was to evaluate the applicability of machine learning methods that combine data on age and prostate-specific antigen (PSA) levels for predicting prostate cancer.

Materials and Methods: We analyzed 943 patients who underwent transrectal ultrasonography (TRUS)-guided prostate biopsy at Chungnam National University Hospital between 2014 and 2018 because of elevated PSA levels and/or abnormal digital rectal examination and/or TRUS findings. We retrospectively reviewed the patients¡¯ medical records, analyzed the prediction rate of prostate cancer, and identified 20 feature importances that could be compared with biopsy results using 5 different algorithms, viz., logistic regression (LR), support vector machine, random forest (RF), extreme gradient boosting, and light gradient boosting machine.

Results: Overall, the cancer detection rate was 41.8%. In patients younger than 75 years and with a PSA level less than 20 ng/mL, the best prediction model for prostate cancer detection was RF among the machine learning methods based on LR analysis. The PSA density was the highest scored feature importances in the same patient group.

Conclusions: These results suggest that the prediction rate of prostate cancer using machine learning methods not inferior to that using LR and that these methods may increase the detection rate for prostate cancer and reduce unnecessary prostate biopsy, as they take into consideration feature importances affecting the prediction rate for prostate cancer.
KEYWORD
Prediction, Prostate cancer, Machine learning, Prostate biopsy
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