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Optimized Identification of High-Grade Prostate Cancer by Combining Different PSA Molecular Forms and PSA Density in a Deep Learning Model

机译:通过在深度学习模型中结合不同PSA分子形式和PSA密度来优化高级前列腺癌的优化鉴定

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摘要

After skin cancer, prostate cancer (PC) is the most common cancer among men. The gold standard for PC diagnosis is based on the PSA (prostate-specific antigen) test. Based on this preliminary screening, the physician decides whether to proceed with further tests, typically prostate biopsy, to confirm cancer and evaluate its aggressiveness. Nevertheless, the specificity of the PSA test is suboptimal and, as a result, about 75% of men who undergo a prostate biopsy do not have cancer even if they have elevated PSA levels. Overdiagnosis leads to unnecessary overtreatment of prostate cancer with undesirable side effects, such as incontinence, erectile dysfunction, infections, and pain. Here, we used artificial neuronal networks to develop models that can diagnose PC efficiently. The model receives as an input a panel of 4 clinical variables (total PSA, free PSA, p2PSA, and PSA density) plus age. The output of the model is an estimate of the Gleason score of the patient. After training on a dataset of 190 samples and optimization of the variables, the model achieved values of sensitivity as high as 86% and 89% specificity. The efficiency of the method can be improved even further by training the model on larger datasets.
机译:皮肤癌后,前列腺癌(PC)是男性中最常见的癌症。对于PC诊断的金标准是基于PSA(前列腺特异抗原)的测试。基于这一初步筛选,医生决定是否继续进行进一步测试,通常是前列腺活检,以确认癌症并评估其侵略性。尽管如此,PSA测试的特异性是次优,因此,即使它们具有升高的PSA水平,约有75%的男性接受前列腺活检的人也没有癌症。过度诊断导致前列腺癌的不必要过度过度,不希望的副作用,例如尿精,勃起功能障碍,感染和疼痛。在这里,我们使用人工神经元网络来开发可以有效地诊断PC的模型。该模型接收为4个临床变量的输入(总PSA,免费PSA,P2PSA和PSA密度)加年龄。该模型的输出是患者Glason评分的估计。在进行190个样本的数据集和变量优化之后,模型实现了敏感性的值,高达86%和89%的特异性。通过在较大的数据集上训练模型,可以进一步提高该方法的效率。

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