四肢软组织肉瘤重建图:一种临床放射学、机器学习驱动的术后预后预测器。

IF 3.3 Q2 ONCOLOGY
JCO Clinical Cancer Informatics Pub Date : 2025-06-01 Epub Date: 2025-06-11 DOI:10.1200/CCI-25-00007
Rami Elmorsi, Luis D Camacho, David D Krijgh, Heather Lyu, Margaret S Roubaud, Keila Torres, Valerae Lewis, Christina L Roland, Alexander F Mericli
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引用次数: 0

摘要

目的:残肢软组织肉瘤(eSTS)切除后伤口闭合方式的选择充满了不确定性。利用机器学习和临床放射学数据,我们开发了肉瘤重建Nomograms (SARCON),这是一种工具,可以根据所选择的重建方式提供五种不良后果的概率估计。方法:回顾性队列研究保留肢体的eSTS切除综合临床变量和放射学特征,包括eSTS和肢体尺寸。目标结果包括手术部位感染(SSI)、伤口裂开(WD)、血肿形成以及轻微和严重并发症。对于每个结果,使用10倍交叉验证(CV)、50个随机80%-20%分割、留一CV和一个测试数据集,开发和评估了三种机器学习分类器——Lasso正则化逻辑回归、Naïve贝叶斯和fastrisk。每个结果的最佳表现模型被用来构建各自的nomogram。结果:共分析了316例肢体保留est切除术,主要位于大腿(54%),小腿(17%)和上臂(11%)。术后结果包括SSI(12%)、WD(16%)、血肿形成(8.5%)、轻微并发症(34%)和严重并发症(25%)。使用Lasso正则化的Logistic回归在所有结果中始终优于其他模型,在所有测试中,接收器操作符曲线下的面积范围为0.83至0.93。结论:通过在重建方式的基础上提供不良后果的概率估计,SARCON使外科医生能够预测并发症并优化重建策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extremity Soft Tissue Sarcoma Reconstruction Nomograms: A Clinicoradiomic, Machine Learning-Powered Predictor of Postoperative Outcomes.

Purpose: The choice of wound closure modality after limb-sparing extremity soft-tissue sarcoma (eSTS) resection is fraught with uncertainty. Leveraging machine learning and clinicoradiomic data, we developed Sarcoma Reconstruction Nomograms (SARCON), a tool that provides probabilistic estimates of five adverse outcomes on the basis of the selected reconstructive modality.

Methods: This retrospective cohort study of limb-sparing eSTS resections integrated clinical variables and radiomic features, including eSTS and limb dimensions. Target outcomes included surgical site infections (SSI), wound dehiscence (WD), seroma formation, and minor and major complications. For each outcome, three machine learning classifiers-Logistic Regression with Lasso regularization, Naïve Bayes, and FasterRisk-were developed and evaluated using 10-fold cross-validation (CV), 50 random 80%-20% splits, leave-one-out CV, and a test data set. The best-performing model for each outcome was used to construct a respective nomogram.

Results: A total of 316 limb-sparing eSTS resections were analyzed, predominantly located in the thigh (54%), lower leg (17%), and upper arm (11%). Postoperative outcomes included SSI (12%), WD (16%), seroma formation (8.5%), minor complications (34%), and major complications (25%). Logistic Regression with Lasso regularization consistently outperformed the other models across all outcomes, achieving area under the receiver operator curves ranging from 0.83 to 0.93 in all tests.

Conclusion: By providing probabilistic estimates of adverse outcomes on the basis of reconstructive modality, SARCON empowers surgeons to anticipate complications and optimize reconstructive strategies.

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来源期刊
CiteScore
6.20
自引率
4.80%
发文量
190
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