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基于 MRI 的小鼠肉瘤深度学习分割与影像组学分析。

MRI-Based Deep Learning Segmentation and Radiomics of Sarcoma in Mice.

机构信息

Departments of Radiology, Center for In Vivo Microscopy; and.

Radiation Oncology, Duke University Medical Center, Durham, NC.

出版信息

Tomography. 2020 Mar;6(1):23-33. doi: 10.18383/j.tom.2019.00021.

Abstract

Small-animal imaging is an essential tool that provides noninvasive, longitudinal insight into novel cancer therapies. However, considerable variability in image analysis techniques can lead to inconsistent results. We have developed quantitative imaging for application in the preclinical arm of a coclinical trial by using a genetically engineered mouse model of soft tissue sarcoma. Magnetic resonance imaging (MRI) images were acquired 1 day before and 1 week after radiation therapy. After the second MRI, the primary tumor was surgically removed by amputating the tumor-bearing hind limb, and mice were followed for up to 6 months. An automatic analysis pipeline was used for multicontrast MRI data using a convolutional neural network for tumor segmentation followed by radiomics analysis. We then calculated radiomics features for the tumor, the peritumoral area, and the 2 combined. The first radiomics analysis focused on features most indicative of radiation therapy effects; the second radiomics analysis looked for features that might predict primary tumor recurrence. The segmentation results indicated that Dice scores were similar when using multicontrast versus single T2-weighted data (0.863 vs 0.861). One week post RT, larger tumor volumes were measured, and radiomics analysis showed greater heterogeneity. In the tumor and peritumoral area, radiomics features were predictive of primary tumor recurrence (AUC: 0.79). We have created an image processing pipeline for high-throughput, reduced-bias segmentation of multiparametric tumor MRI data and radiomics analysis, to better our understanding of preclinical imaging and the insights it provides when studying new cancer therapies.

摘要

小动物成像技术是一种重要的工具,可提供非侵入性、纵向的新型癌症治疗方法的见解。然而,图像分析技术的差异较大,可能导致结果不一致。我们通过使用软组织肉瘤的基因工程小鼠模型,开发了定量成像方法,应用于临床前试验的临床前部分。在放射治疗前 1 天和治疗后 1 周采集磁共振成像 (MRI) 图像。第二次 MRI 后,通过截肢肿瘤-bearing 后肢切除原发性肿瘤,并且可以在 6 个月内对小鼠进行跟踪。使用卷积神经网络进行多对比 MRI 数据的自动分析,对肿瘤进行分割,然后进行放射组学分析。然后,我们计算了肿瘤、肿瘤周围区域和两者的联合的放射组学特征。第一次放射组学分析侧重于最能指示放射治疗效果的特征;第二次放射组学分析寻找可能预测原发性肿瘤复发的特征。分割结果表明,使用多对比与单 T2 加权数据相比,Dice 分数相似 (0.863 与 0.861)。在 RT 后 1 周,测量到更大的肿瘤体积,并且放射组学分析显示出更大的异质性。在肿瘤和肿瘤周围区域,放射组学特征可预测原发性肿瘤复发 (AUC:0.79)。我们已经创建了一种图像处理管道,用于高通量、降低偏倚的多参数肿瘤 MRI 数据分割和放射组学分析,以更好地了解临床前成像及其在研究新癌症治疗方法时提供的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b6d7/7138523/715728fa4066/GP-TOMJ200002F001.jpg

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