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Supervised Machine-Learning Enables Segmentation and Evaluation of Heterogeneous Post-treatment Changes in Multi-Parametric MRI of Soft-Tissue Sarcoma

机译:监督的机器学习可对软组织肉瘤的多参数MRI进行异质后处理变化的分割和评估

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摘要

Background: Multi-parametric MRI provides non-invasive methods for response assessment of soft-tissue sarcoma (STS) from non-surgical treatments. However, evaluation of MRI parameters over the whole tumor volume may not reveal the full extent of post-treatment changes as STS tumors are often highly heterogeneous, including cellular tumor, fat, necrosis, and cystic tissue compartments. In this pilot study, we investigate the use of machine-learning approaches to automatically delineate tissue compartments in STS, and use this approach to monitor post-radiotherapy changes.Methods: Eighteen patients with retroperitoneal sarcoma were imaged using multi-parametric MRI; 8/18 received a follow-up imaging study 2–4 weeks after pre-operative radiotherapy. Eight commonly-used supervised machine-learning techniques were optimized for classifying pixels into one of five tissue sub-types using an exhaustive cross-validation approach and expert-defined regions of interest as a gold standard. Final pixel classification was smoothed using a Markov Random Field (MRF) prior distribution on the final machine-learning models.Findings: 5/8 machine-learning techniques demonstrated high median cross-validation accuracies (82.2%, range 80.5–82.5%) with no significant difference between these five methods. One technique was selected (Naïve-Bayes) due to its relatively short training and class-prediction times (median 0.73 and 0.69 ms, respectively on a 3.5 GHz personal machine). When combined with the MRF-prior, this approach was successfully applied in all eight post-radiotherapy imaging studies and provided visualization and quantification of changes to independent STS sub-regions following radiotherapy for heterogeneous response assessment.Interpretation: Supervised machine-learning approaches to tissue classification in multi-parametric MRI of soft-tissue sarcomas provide quantitative evaluation of heterogeneous tissue changes following radiotherapy.
机译:背景:多参数MRI为非手术治疗的软组织肉瘤(STS)响应评估提供了非侵入性方法。然而,由于STS肿瘤通常高度异质,包括细胞肿瘤,脂肪,坏死和囊性组织区室,因此对整个肿瘤体积的MRI参数进行评估可能无法揭示治疗后变化的全部范围。在这项前瞻性研究中,我们调查了使用机器学习方法自动描绘STS中的组织隔室,并使用这种方法来监测放射治疗后的变化。方法:使用以下方法对18例腹膜后肉瘤患者进行了成像多参数MRI; 8/18在术前放疗后2–4周接受了随访影像学研究。优化了八种常用的有监督的机器学习技术,使用详尽的交叉验证方法和专家定义的感兴趣区域作为金标准,将像素分为五种组织亚型之一。在最终的机器学习模型上,使用Markov随机场(MRF)先验分布对最终的像素分类进行了平滑处理。发现: 5/8的机器学习技术显示出较高的交叉验证中位数准确性(82.2%,范围为80.5–82.5%),这五种方法之间无显着差异。选择了一种技术(Naïve-Bayes),因为它的训练和分类预测时间相对较短(在3.5 GHz的个人计算机上分别为0.73和0.69 ms)。当与先前的MRF结合使用时,该方法已成功应用于所有八个放射治疗后的影像学研究中,并提供了可视化和量化放射治疗后独立STS子区域的变化以进行异质性反应评估。解释:在软组织肉瘤的多参数MRI中对组织分类进行监督的机器学习方法可对放疗后异质组织的变化进行定量评估。

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