A deep learning-informed interpretation of why and when dose metrics outside the PTV can affect the risk of distant metastasis in SBRT NSCLC patients.

IF 3.3 2区 医学 Q2 ONCOLOGY
D Dudas, T J Dilling, I El Naqa
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引用次数: 0

Abstract

Purpose: Recent papers suggested a correlation between the risk of distant metastasis (DM) and dose outside the PTV, though conclusions in different publications conflicted. This study resolves these conflicts and provides a compelling explanation of prognostic factors.

Materials and methods: A dataset of 478 NSCLC patients treated with SBRT (IMRT or VMAT) was analyzed. We developed a deep learning model for DM prediction and explainable AI was used to identify the most significant prognostic factors. Subsequently, the prognostic power of the extracted features and clinical details were analyzed using conventional statistical methods.

Results: Treatment technique, tumor features, and dosiomic features in a 3 cm wide ring around the PTV (PTV3cm) were identified as the strongest predictors of DM. The Hazard Ratio (HR) for Dmean,PTV3cm was significantly above 1 (p < 0.001). There was no significance of the PTV3cm dose after treatment technique stratification. However, the dose in PTV3cm was found to be a highly significant DM predictor (HR > 1, p = 0.004) when analyzing only VMAT patients with small and spherical tumors (i.e., sphericity > 0.5).

Conclusions: The main reason for conflicting conclusions in previous papers was inconsistent datasets and insufficient consideration of confounding variables. No causal correlation between the risk of DM and dose outside the PTV was found. However, the mean dose to PTV3cm can be a significant predictor of DM in small spherical targets treated with VMAT, which might clinically imply considering larger PTV margins for smaller, more spherical tumors (e.g., if IGTV > 2 cm, then margin ≤ 7 mm, else margin > 7 mm).

以深度学习为基础,解释 PTV 外的剂量指标为何以及何时会影响 SBRT NSCLC 患者的远处转移风险。
目的:最近有论文指出远处转移(DM)的风险与PTV以外的剂量之间存在相关性,但不同论文的结论存在冲突。本研究解决了这些矛盾,并对预后因素做出了令人信服的解释:分析了478名接受SBRT(IMRT或VMAT)治疗的NSCLC患者的数据集。我们开发了一个用于DM预测的深度学习模型,并使用可解释人工智能来识别最重要的预后因素。随后,我们使用传统统计方法分析了提取的特征和临床细节的预后能力:结果:治疗技术、肿瘤特征和PTV周围3厘米宽环形区域(PTV3厘米)的剂量组学特征被确定为DM的最强预测因素。治疗技术分层后,Dmean,PTV3cm剂量的危险比(HR)显著高于1(P 3cm剂量)。然而,在仅对肿瘤较小且呈球形(即球形度大于 0.5)的 VMAT 患者进行分析时,发现 PTV3cm 剂量是一个高度显著的 DM 预测因子(HR > 1,p = 0.004):结论:以往论文中结论相互矛盾的主要原因是数据集不一致以及对混杂变量考虑不足。没有发现DM风险与PTV外剂量之间存在因果关系。然而,PTV3厘米的平均剂量可以显著预测VMAT治疗的小球形靶点的DM,这可能意味着临床上应考虑为更小更球形的肿瘤留出更大的PTV边缘(例如,如果IGTV>2厘米,则边缘≤7毫米,否则边缘>7毫米)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Radiation Oncology
Radiation Oncology ONCOLOGY-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
6.50
自引率
2.80%
发文量
181
审稿时长
3-6 weeks
期刊介绍: Radiation Oncology encompasses all aspects of research that impacts on the treatment of cancer using radiation. It publishes findings in molecular and cellular radiation biology, radiation physics, radiation technology, and clinical oncology.
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