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Cancer prevention, detection, and intervention : Third MICCAI Workshop, CaPTion 2024, Held in Conjunction with MICCAI 2024, Marrakesh, Morocco, October 6, 2024, Proceedings. CaPTion (Workshop) (3rd : 2024 : Marrakech, Morocco)最新文献

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Treatment efficacy prediction of focused ultrasound therapies using multi-parametric magnetic resonance imaging. 利用多参数磁共振成像预测聚焦超声疗法的疗效。
Amanpreet Singh, Samuel Adams-Tew, Sara Johnson, Henrik Odeen, Jill Shea, Audrey Johnson, Lorena Day, Alissa Pessin, Allison Payne, Sarang Joshi

Magnetic resonance guided focused ultrasound (MRgFUS) is one of the most attractive emerging minimally invasive procedures for breast cancer, which induces localized hyperthermia, resulting in tumor cell death. Accurately assessing the post-ablation viability of all treated tumor tissue and surrounding margins immediately after MRgFUS thermal therapy residual tumor tissue is essential for evaluating treatment efficacy. While both thermal and vascular MRI-derived biomarkers are currently used to assess treatment efficacy, currently, no adequately accurate methods exist for the in vivo determination of tissue viability during treatment. The non-perfused volume (NPV) acquired three or more days following MRgFUS thermal ablation treatment is most correlated with the gold standard of histology. However, its delayed timing impedes real-time guidance for the treating clinician during the procedure. We present a robust deep-learning framework that leverages multiparametric MR imaging acquired during treatment to predict treatment efficacy. The network uses qualtitative T1, T2 weighted images and MR temperature image derived metrics to predict the three day post-ablation NPV. To validate the proposed approach, an ablation study was conducted on a dataset (N=6) of VX2 tumor model rabbits that had undergone MRgFUS ablation. Using a deep learning framework, we evaluated which of the acquired MRI inputs were most predictive of treatment efficacy as compared to the expert radiologist annotated 3 day post-treatment images.

磁共振引导聚焦超声(MRgFUS)是治疗乳腺癌最有吸引力的新兴微创手术之一,它能诱导局部热疗,导致肿瘤细胞死亡。在 MRgFUS 热疗残留肿瘤组织后,立即准确评估所有治疗后肿瘤组织和周围边缘的消融后存活率对于评估疗效至关重要。虽然热疗和血管磁共振成像衍生生物标记物目前都被用于评估治疗效果,但目前还没有足够准确的方法来确定治疗过程中的体内组织存活率。MRgFUS 热消融治疗后三天或更长时间获得的非灌注容积(NPV)与组织学这一黄金标准最为相关。然而,其延迟时间妨碍了临床医生在治疗过程中提供实时指导。我们提出了一种稳健的深度学习框架,利用治疗过程中获取的多参数磁共振成像来预测疗效。该网络使用定性 T1、T2 加权图像和磁共振温度图像衍生指标来预测消融术后三天的 NPV。为了验证所提出的方法,我们对接受过 MRgFUS 消融术的 VX2 肿瘤模型兔数据集(N=6)进行了消融研究。利用深度学习框架,我们评估了与放射科专家注释的治疗后 3 天图像相比,哪些获取的 MRI 输入最能预测治疗效果。
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Cancer prevention, detection, and intervention : Third MICCAI Workshop, CaPTion 2024, Held in Conjunction with MICCAI 2024, Marrakesh, Morocco, October 6, 2024, Proceedings. CaPTion (Workshop) (3rd : 2024 : Marrakech, Morocco)
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