Abstract

ObjectivesThe importance of clinical outcome prediction models using artificial intelligence (AI) is being emphasized owing to the increasing necessity of developing a clinical decision support system (CDSS) employing AI. Therefore, in this study, we proposed a “Dr. Answer” AI software based on the clinical outcome prediction model for prostate cancer treated with radical prostatectomy.MethodsThe Dr. Answer AI was developed based on a clinical outcome prediction model, with a user-friendly interface. We used 7,128 clinical data of prostate cancer treated with radical prostatectomy from three hospitals. An outcome prediction model was developed to calculate the probability of occurrence of 1) tumor, node, and metastasis (TNM) staging, 2) extracapsular extension, 3) seminal vesicle invasion, and 4) lymph node metastasis. Random forest and k-nearest neighbors algorithms were used, and the proposed system was compared with previous algorithms.ResultsRandom forest exhibited good performance for TNM staging (recall value: 76.98%), while k-nearest neighbors exhibited good performance for extracapsular extension, seminal vesicle invasion, and lymph node metastasis (80.24%, 98.67%, and 95.45%, respectively). The Dr. Answer AI software consisted of three primary service structures: 1) patient information, 2) clinical outcome prediction, and outcomes according to the National Comprehensive Cancer Network guideline.ConclusionThe proposed clinical outcome prediction model could function as an effective CDSS, supporting the decisions of the physicians, while enabling the patients to understand their treatment outcomes. The Dr. Answer AI software for prostate cancer helps the doctors to explain the treatment outcomes to the patients, allowing the patients to be more confident about their treatment plans.

Highlights

  • It has become easier to collect and use electronic medical record (EMR) data from multiple hospitals because of the increased availability of multi-center clinical data provided by hospitals

  • The Dr Answer artificial intelligence (AI) was developed based on a clinical outcome prediction model, with a user-friendly interface

  • The Dr Answer AI software consisted of three primary service structures: 1) patient information, 2) clinical outcome prediction, and outcomes according to the National Comprehensive Cancer Network guideline

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Summary

Introduction

It has become easier to collect and use electronic medical record (EMR) data from multiple hospitals because of the increased availability of multi-center clinical data provided by hospitals. Owing to the growing necessity for developing a clinical decision support system (CDSS) that employs artificial intelligence (AI), the importance of predictive models using AI has been emphasized. In South Korea, a large-scale government-supported project employing large-scale multiorganization data has been initiated in 2018 by the National IT Industry Promotion Agency (NIPA) [4]. The “PROstate Medical Intelligence System Enterprise-Clinical, Imaging, and Pathology (PROMISE CLIP)” is one of the NIPA-supported projects for PCa undertaken by K-Dash. This project has been addressing the medical requirements of PCa since April 1, 2018

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