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用于预测磨玻璃结节患者侵袭性的可解释 CT 放射组学模型。

Interpretable CT radiomics model for invasiveness prediction in patients with ground-glass nodules.

机构信息

Department of Radiology, Jiaxing TCM Hospital Affiliated to Zhejiang Chinese Medical University, Jiaxing, China.

Department of Radiology, Shunde Hospital, Southern Medical University (The First People's Hospital of Shunde), Foshan, China.

出版信息

Clin Radiol. 2024 Jan;79(1):e8-e16. doi: 10.1016/j.crad.2023.09.016. Epub 2023 Oct 3.

Abstract

AIM

To evaluate the performance of an interpretable computed tomography (CT) radiomic model in predicting the invasiveness of ground-glass nodules (GGNs).

MATERIALS AND METHODS

The study was conducted retrospectively from 1 August 2017 to 1 August 2022, at three different centres. Two hundred and thirty patients with GGNs were enrolled at centre I as a training cohort. Centres II (n=157) and III (n=156) formed two external validation cohorts. Radiomics features extracted based on CT were reduced by a coarse-fine feature screening strategy. A radiomic model was developed through the use of the LASSO (least absolute shrinkage and selection operator) and XGBoost algorithms. Then, a radiological model was established through multivariate logistic regression analysis. Finally, the interpretability of the model was explored using SHapley Additive exPlanations (SHAP).

RESULTS

The radiomic XGBoost model outperformed the radiomic logistic model and radiological model in assessing the invasiveness of GGNs. The area under the curve (AUC) values for the radiomic XGBoost model were 0.885 (95% confidence interval [CI] 0.836-0.923), 0.853 (95% CI 0.790-0.906), and 0.838 (95% CI 0.773-0.902) in the training and the two external validation cohorts, respectively. The SHAP method allowed for both a quantitative and visual representation of how decisions were made using a given model for each individual patient. This can provide a deeper understanding of the decision-making mechanisms within the model and the factors that contribute to its prediction effectiveness.

CONCLUSIONS

The present interpretable CT radiomics model has the potential to preoperatively evaluate the invasiveness of GGNs. Furthermore, it can provide personalised, image-based clinical-decision support.

摘要

目的

评估一种可解释的计算机断层扫描(CT)放射组学模型在预测磨玻璃结节(GGN)侵袭性方面的性能。

材料与方法

本研究为回顾性研究,于 2017 年 8 月 1 日至 2022 年 8 月 1 日在三个不同中心进行。中心 I 纳入 230 例 GGN 患者作为训练队列。中心 II(n=157)和中心 III(n=156)分别作为外部验证队列 2 和队列 3。基于 CT 提取的放射组学特征采用粗-精特征筛选策略进行降维。采用 LASSO(最小绝对收缩和选择算子)和 XGBoost 算法建立放射组学模型。然后通过多变量逻辑回归分析建立放射学模型。最后,采用 SHapley Additive exPlanations(SHAP)方法探索模型的可解释性。

结果

与放射组学逻辑模型和放射学模型相比,放射组学 XGBoost 模型在评估 GGN 侵袭性方面表现更好。放射组学 XGBoost 模型在训练集及两个外部验证队列中的曲线下面积(AUC)值分别为 0.885(95%置信区间 [CI] 0.836-0.923)、0.853(95% CI 0.790-0.906)和 0.838(95% CI 0.773-0.902)。SHAP 方法不仅可以定量表示,还可以直观地表示给定模型对每个患者的决策过程。这可以提供对模型决策机制以及对其预测有效性有贡献的因素的更深入理解。

结论

本研究提出的可解释 CT 放射组学模型具有术前评估 GGN 侵袭性的潜力,并可为患者提供个体化、基于图像的临床决策支持。

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