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开发和外部验证用于预测未分化多形性肉瘤生存的机器学习模型。

Development and external validation of a machine learning model for prediction of survival in undifferentiated pleomorphic sarcoma.

机构信息

Department of Orthopedic Surgery, Section of Orthopedic Oncology, Rush University Medical Center, 1611 W. Harrison St., Suite 300, Chicago, IL, USA.

Department of Pathology, Rush University Medical Center, Chicago, IL, USA.

出版信息

Musculoskelet Surg. 2024 Mar;108(1):77-86. doi: 10.1007/s12306-023-00795-w. Epub 2023 Sep 1.

Abstract

PURPOSE

Machine learning (ML) algorithms to predict cancer survival have recently been reported for a number of sarcoma subtypes, but none have investigated undifferentiated pleomorphic sarcoma (UPS). ML is a powerful tool that has the potential to better prognosticate UPS.

METHODS

The Surveillance, Epidemiology, and End Results (SEER) database was queried for cases of histologically confirmed undifferentiated pleomorphic sarcoma (UPS) (n = 665). Patient, tumor, and treatment characteristics were recorded, and ML models were developed to predict 1-, 3-, and 5-year survival. The best performing ML model was externally validated using an institutional cohort of UPS patients (n = 151).

RESULTS

All ML models performed best at the 1-year time point and worst at the 5-year time point. On internal validation within the SEER cohort, the best models had c-statistics of 0.67-0.69 at the 5-year time point. The Multi-Layer Perceptron Neural Network (MLP) model was the best performing model and used for external validation. Similarly, the MLP model performed best at 1-year and worst at 5-year on external validation with c-statistics of 0.85 and 0.81, respectively. The MLP model was well calibrated on external validation. The MLP model has been made publicly available at https://rachar.shinyapps.io/ups_app/ .

CONCLUSION

Machine learning models perform well for survival prediction in UPS, though this sarcoma subtype may be more difficult to prognosticate than other subtypes. Future studies are needed to further validate the machine learning approach for UPS prognostication.

摘要

目的

机器学习(ML)算法最近已被报道可用于预测多种肉瘤亚型的癌症生存情况,但尚无研究涉及未分化多形性肉瘤(UPS)。ML 是一种强大的工具,有可能更好地预测 UPS 的预后。

方法

对组织学证实的未分化多形性肉瘤(UPS)(n=665)的 Surveillance, Epidemiology, and End Results(SEER)数据库进行了查询。记录了患者、肿瘤和治疗特征,并开发了 ML 模型来预测 1 年、3 年和 5 年生存率。使用 UPS 患者的机构队列(n=151)对最佳 ML 模型进行了外部验证。

结果

所有 ML 模型在 1 年时间点表现最佳,在 5 年时间点表现最差。在 SEER 队列内部验证中,最佳模型在 5 年时间点的 C 统计量为 0.67-0.69。多层感知机神经网络(MLP)模型是表现最好的模型,并用于外部验证。同样,MLP 模型在外部验证中分别在 1 年和 5 年时表现最佳,C 统计量分别为 0.85 和 0.81。MLP 模型在外部验证中具有良好的校准性能。MLP 模型已在 https://rachar.shinyapps.io/ups_app/ 上公开提供。

结论

机器学习模型在 UPS 生存预测中表现良好,但这种肉瘤亚型可能比其他亚型更难预测。需要进一步的研究来验证机器学习方法在 UPS 预后预测中的应用。

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