人工智能在评估纵向脑转移治疗反应中的价值。

IF 3.7 Q1 CLINICAL NEUROLOGY
Neuro-oncology advances Pub Date : 2025-01-10 eCollection Date: 2025-01-01 DOI:10.1093/noajnl/vdae216
Vincent Andrearczyk, Luis Schiappacasse, Matthieu Raccaud, Jean Bourhis, John O Prior, Michel A Cuendet, Andreas F Hottinger, Vincent Dunet, Adrien Depeursinge
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引用次数: 0

摘要

背景:脑转移(BM)患者治疗后的有效随访是适应治疗和发现新病灶的关键。目前的指南(神经肿瘤学- bm反应评估)有局限性,如患者水平评估和任意病变选择,可能无法反映高肿瘤负荷病例的结果。准确、可重复和自动化的反应评估可以改善随访决策,包括(1)优化再治疗时间,以避免治疗反应性病变或延迟治疗进展性病变;(2)提高临床试验中评估反应的准确性。方法:我们使用一维和体积标准比较手动和自动(基于深度学习的)病变轮廓。分析集中在(1)尺寸和RANO-BM类别的一致性,(2)扫描仪旋转和随时间变化的测量稳定性,以及(3)1年结果的可预测性。该研究包括49例BM患者,184项MRI研究和448个病变,由放射科医生回顾性评估。结果:自动轮廓和体积标准显示出优越的稳定性(P P结论:自动BM轮廓和体积测量为改善BM管理的随访和治疗决策提供了有前途的工具。通过提高精确性和可重复性,这些方法可以简化临床工作流程并改善试验和实践中的反应评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The value of AI for assessing longitudinal brain metastases treatment response.

Background: Effective follow-up of brain metastasis (BM) patients post-treatment is crucial for adapting therapies and detecting new lesions. Current guidelines (Response Assessment in Neuro-Oncology-BM) have limitations, such as patient-level assessments and arbitrary lesion selection, which may not reflect outcomes in high tumor burden cases. Accurate, reproducible, and automated response assessments can improve follow-up decisions, including (1) optimizing re-treatment timing to avoid treating responding lesions or delaying treatment of progressive ones, and (2) enhancing precision in evaluating responses during clinical trials.

Methods: We compared manual and automatic (deep learning-based) lesion contouring using unidimensional and volumetric criteria. Analysis focused on (1) agreement in size and RANO-BM categories, (2) stability of measurements under scanner rotations and over time, and (3) predictability of 1-year outcomes. The study included 49 BM patients, with 184 MRI studies and 448 lesions, retrospectively assessed by radiologists.

Results: Automatic contouring and volumetric criteria demonstrated superior stability (P < .001 for rotation; P < .05 over time) and better outcome predictability compared to manual methods. These approaches reduced observer variability, offering reliable and efficient response assessments. The best outcome predictability, defined as 1-year response, was achieved using automatic contours and volumetric measurements. These findings highlight the potential of automated tools to streamline clinical workflows and provide consistency across evaluators, regardless of expertise.

Conclusion: Automatic BM contouring and volumetric measurements provide promising tools to improve follow-up and treatment decisions in BM management. By enhancing precision and reproducibility, these methods can streamline clinical workflows and improve the evaluation of response in trials and practice.

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CiteScore
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