Zhou Chengyuan, Li Han, Zeng Hao, Wang Pan
Department of Oncology, The Affiliated Hospital of Southwest Medical University, 25 TAIPING Street, Luzhou City, 646000, Sichuan Province, China.
Clin Transl Oncol. 2025 May;27(5):2327-2338. doi: 10.1007/s12094-024-03717-9. Epub 2024 Sep 27.
The objective of this study was to analyze the incidence and overall survival (OS) of osteosarcoma (OSC) and Ewing's sarcoma (EWS) in a pediatric and adolescent population, employing machine learning (ML) and deep learning (DL) models to predict the likelihood of metastasis.
Involving 2465 OSC and 1373 EWS patients aged 0-19 years, from 2004 to 2020. ML techniques-Lasso, Ridge Regression, Elastic Net, and Random Forest-were used alongside a deep learning model based on TensorFlow and Keras, to construct predictive models for metastasis. These models were optimized using grid search with cross-validation and evaluated on their performance metrics, including AUC, sensitivity, and accuracy. The variables' importance in metastasis prediction was determined using SHAP values. Statistical analysis was performed using R software, and an online nomogram was developed for clinical use.
The age-adjusted incidence of OSC and EWS from 2004 to 2020 showed a significant uptrend. The deep learning model, iterated 50 times, outperformed the Random Forest model in both loss and accuracy stabilization. The nomogram created demonstrated accurate survival predictions, as evidenced by its calibration curves and the distinction between high and low-risk groups.
The increasing trend in age-adjusted incidence of OSC and EWS highlights the need for continued research and improved therapeutic strategies in this domain. The study employed ML and DL models to predict distant metastasis in pediatric and adolescent patients with OSC and EWS, providing a valuable tool for prognosis. The online nomogram developed as a part of this research enhances the models' clinical utility, offering an accessible means for clinicians to predict survival outcomes effectively.
本研究的目的是分析儿科和青少年人群中骨肉瘤(OSC)和尤因肉瘤(EWS)的发病率及总生存期(OS),采用机器学习(ML)和深度学习(DL)模型预测转移的可能性。
纳入2004年至2020年期间年龄在0至19岁的2465例OSC患者和1373例EWS患者。将ML技术(套索回归、岭回归、弹性网络和随机森林)与基于TensorFlow和Keras的深度学习模型一起用于构建转移预测模型。这些模型通过交叉验证的网格搜索进行优化,并根据其性能指标(包括AUC、敏感性和准确性)进行评估。使用SHAP值确定变量在转移预测中的重要性。使用R软件进行统计分析,并开发了一个在线列线图供临床使用。
2004年至2020年,OSC和EWS的年龄调整发病率呈显著上升趋势。迭代50次的深度学习模型在损失和准确性稳定方面均优于随机森林模型。所创建的列线图显示出准确的生存预测,校准曲线以及高风险和低风险组之间的差异证明了这一点。
OSC和EWS年龄调整发病率的上升趋势凸显了该领域持续研究和改进治疗策略的必要性。本研究采用ML和DL模型预测OSC和EWS儿科和青少年患者的远处转移,为预后提供了有价值的工具。作为本研究一部分开发的在线列线图增强了模型的临床实用性,为临床医生提供了一种有效预测生存结果的便捷方法。