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Auxiliary Medical Decision System for Prostate Cancer Based on Ensemble Method

机译:基于集合法的前列腺癌辅助医学决策系统

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Prostate cancer (PCa) is one of the main diseases that endanger men’s health worldwide. In developing countries, due to the large number of patients and the lack of medical resources, there is a big conflict between doctors and patients. To solve this problem, an auxiliary medical decision system for prostate cancer was constructed. The system used six relevant tumor markers as the input features and employed classical machine learning models (support vector machine and artificial neural network). Stacking method aimed at different ensemble models together was used for the reduction of overfitting. 1,933,535 patient information items had been collected from three first-class hospitals in the past five years to train the model. The result showed that the auxiliary medical system could make use of massive data. Its performance is continuously improved as the amount of data increases. Based on the system and collected data, statistics on the incidence of prostate cancer in the past five years were carried out. In the end, influence of diet habit and genetic inheritance for prostate cancer was analyzed. Results revealed the increasing prevalence of PCa and great negative impact caused by high-fat diet and genetic inheritance.
机译:前列腺癌(PCA)是危害全球男性健康的主要疾病之一。在发展中国家,由于大量患者和缺乏医疗资源,医生与患者之间存在大的冲突。为了解决这个问题,构建了前列腺癌的辅助医学决策系统。该系统使用六种相关的肿瘤标志物作为输入特征,并采用经典机器学习模型(支持向量机和人工神经网络)。瞄准不同集合模型的堆叠方法用于减少过度装备。在过去五年中,从三级一流的医院收集了1,933,535名患者信息,培训模型。结果表明,辅助医疗系统可以利用大规模数据。随着数据量的增加,其性能不断提高。基于系统和收集的数据,对过去五年前列腺癌发生率的统计学进行了。最后,分析了饮食习性和前列腺癌遗传遗传的影响。结果表明,PCA的患病率越来越多,高脂饮食和遗传遗传造成的巨大负面影响。

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