Hemal Semwal, Colton Ladbury, Ali Sabbagh, Osama Mohamad, Derya Tilki, Arya Amini, Jeffrey Wong, Yun Rose Li, Scott Glaser, Bertram Yuh, Savita Dandapani
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Clinical utility was evaluated using decision curve analysis (DCA). Performance metrics were confirmed on an external validation data set.</p><p><strong>Results: </strong>The ML-based extreme gradient boosted trees model achieved the best performance with an AUC of 0.744, 0.749, 0.816, 0.811 for the OC, ECE, SVI, and LNI models, respectively. The MSK nomograms achieved an AUC of 0.708, 0.742, 0.806, 0.802 for the OC, ECE, SVI, and LNI models, respectively. These models also performed the best on DCA. Findings were consistent on both a holdout internal validation data set as well as an external validation data set.</p><p><strong>Conclusions: </strong>Our ML models better predicted pathologic stage relative to existing nomograms at predicting pathologic stage. 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引用次数: 0
摘要
背景:尽管存在多种提名图,但机器学习(ML)方法可能会改善对前列腺癌患者病理分期的预测。目的:开发预测病理分期的 ML 模型,使其优于现有的使用现成临床病理变量的提名图:方法:从国家癌症数据库中找出接受手术的前列腺腺癌患者。我们训练了七个 ML 模型来预测器官封闭(OC)疾病、囊外扩展、精囊侵犯(SVI)和淋巴结受累(LNI)。模型的性能是通过保留测试数据集上的曲线下面积(AUC)来衡量的。临床实用性通过决策曲线分析(DCA)进行评估。在外部验证数据集上确认了性能指标:基于 ML 的极梯度增强树模型性能最佳,OC、ECE、SVI 和 LNI 模型的 AUC 分别为 0.744、0.749、0.816 和 0.811。MSK提名图的OC、ECE、SVI和LNI模型的AUC分别为0.708、0.742、0.806和0.802。这些模型在 DCA 上的表现也最好。这些结果在保留的内部验证数据集和外部验证数据集上都是一致的:结论:在预测病理分期方面,我们的 ML 模型比现有的提名图更能预测病理分期。准确预测病理分期有助于肿瘤学家和患者确定前列腺癌患者的最佳明确治疗方案。
Machine learning and explainable artificial intelligence to predict pathologic stage in men with localized prostate cancer.
Background: Though several nomograms exist, machine learning (ML) approaches might improve prediction of pathologic stage in patients with prostate cancer. To develop ML models to predict pathologic stage that outperform existing nomograms that use readily available clinicopathologic variables.
Methods: Patients with prostate adenocarcinoma who underwent surgery were identified in the National Cancer Database. Seven ML models were trained to predict organ-confined (OC) disease, extracapsular extension, seminal vesicle invasion (SVI), and lymph node involvement (LNI). Model performance was measured using area under the curve (AUC) on a holdout testing data set. Clinical utility was evaluated using decision curve analysis (DCA). Performance metrics were confirmed on an external validation data set.
Results: The ML-based extreme gradient boosted trees model achieved the best performance with an AUC of 0.744, 0.749, 0.816, 0.811 for the OC, ECE, SVI, and LNI models, respectively. The MSK nomograms achieved an AUC of 0.708, 0.742, 0.806, 0.802 for the OC, ECE, SVI, and LNI models, respectively. These models also performed the best on DCA. Findings were consistent on both a holdout internal validation data set as well as an external validation data set.
Conclusions: Our ML models better predicted pathologic stage relative to existing nomograms at predicting pathologic stage. Accurate prediction of pathologic stage can help oncologists and patients determine optimal definitive treatment options for patients with prostate cancer.
期刊介绍:
The Prostate is a peer-reviewed journal dedicated to original studies of this organ and the male accessory glands. It serves as an international medium for these studies, presenting comprehensive coverage of clinical, anatomic, embryologic, physiologic, endocrinologic, and biochemical studies.