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Informatics in radiology: comparison of logistic regression and artificial neural network models in breast cancer risk estimation.

机译:放射学中的信息学:乳腺癌风险评估中逻辑回归模型和人工神经网络模型的比较。

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摘要

Computer models in medical diagnosis are being developed to help physicians differentiate between healthy patients and patients with disease. These models can aid in successful decision making by allowing calculation of disease likelihood on the basis of known patient characteristics and clinical test results. Two of the most frequently used computer models in clinical risk estimation are logistic regression and an artificial neural network. A study was conducted to review and compare these two models, elucidate the advantages and disadvantages of each, and provide criteria for model selection. The two models were used for estimation of breast cancer risk on the basis of mammographic descriptors and demographic risk factors. Although they demonstrated similar performance, the two models have unique characteristics-strengths as well as limitations-that must be considered and may prove complementary in contributing to improved clinical decision making.
机译:正在开发医学诊断计算机模型,以帮助医师区分健康患者和疾病患者。这些模型通过允许根据已知的患者特征和临床测试结果计算疾病的可能性,可以帮助做出成功的决策。临床风险评估中最常用的两种计算机模型是逻辑回归和人工神经网络。进行了一项研究,以审查和比较这两种模型,阐明每种模型的优缺点,并提供模型选择的标准。这两种模型用于根据乳腺X线照片描述者和人口统计学危险因素来估计乳腺癌风险。尽管它们表现出相似的性能,但是这两个模型具有独特的特征-强度和局限性-必须加以考虑,并可能在补充其改善临床决策方面被证明是互补的。

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