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Prostate Cancer Biopsy Recommendation through Use of Machine Learning Classification Techniques

机译:通过使用机器学习分类技术推荐前列腺癌活检

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This study proposes the investigation and application of machine learning techniques in order to aid prostate cancer diagnosis through classification in order to either recommend or spare patients from biopsy, an essential procedure for confirmation of diagnosis. Pre-treatment variables collected from patients of the Academic Hospital of State University of Londrina, Brazil (HU-UEL) from 2005 to 2010 include age, PSA (prostate specific antigen) marker, DRE (digital rectum examination), free/total PSA and PSA density value. Models have been generated using logistic regression, two artificial neural networks (MultiLayer-Perceptron, MLPClassifier) and two decision tree algorithms (ADTree, PART). Obtained accuracy indicators for models were 69.4%, 70.5%, 71.14%, 71.8% and 71.48 % respectively.
机译:这项研究提出了机器学习技术的研究和应用,以通过分类来帮助前列腺癌的诊断,从而推荐或避免患者进行活检,这是确诊的必要步骤。 2005年至2010年从巴西隆德里纳州立大学医学院附属医院(HU-UEL)的患者收集的治疗前变量包括年龄,PSA(前列腺特异性抗原)标记,DRE(数字直肠检查),游离/总PSA和PSA密度值。使用逻辑回归,两个人工神经网络(MultiLayer-Perceptron,MLPClassifier)和两个决策树算法(ADTree,PART)生成了模型。获得的模型精度指标分别为69.4%,70.5%,71.14%,71.8%和71.48%。

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