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Automatic assessment of glioma burden: a deep learning algorithm for fully automated volumetric and bidimensional measurement

机译:自动评估神经胶质瘤负担:用于全自动体积和二维测量的深度学习算法

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Background. Longitudinal measurement of glioma burden with MRI is the basis for treatment response assessment. In this study, we developed a deep learning algorithm that automatically segments abnormal fluid attenuated inversion recovery (FLAIR) hyperintensity and contrast-enhancing tumor, quantitating tumor volumes as well as the product of maximum bidimensional diameters according to the Response Assessment in Neuro-Oncology (RANO) criteria (AutoRANO).Methods. Two cohorts of patients were used for this study. One consisted of 843 preoperative MRIs from 843 patients with low- or high-grade gliomas from 4 institutions and the second consisted of 713 longitudinal post-operative MRI visits from 54 patients with newly diagnosed glioblastomas (each with 2 pretreatment "baseline" MRIs) from 1 institution.Results. The automatically generated FLAIR hyperintensity volume, contrast-enhancing tumor volume, and AutoRANO were highly repeatable for the double-baseline visits, with an intraclass correlation coefficient (ICC) of 0.986, 0.991, and 0.977, respectively, on the cohort of postoperative GBM patients. Furthermore, there was high agreement between manually and automatically measured tumor volumes, with ICC values of 0.915, 0.924, and 0.965 for preoperative FLAIR hyperintensity, postoperative FLAIR hyperintensity, and postoperative contrast-enhancing tumor volumes, respectively. Lastly, the ICCs for comparing manually and automatically derived longitudinal changes in tumor burden were 0.917, 0.966, and 0.850 for FLAIR hyperintensity volume, contrast-enhancing tumor volume, and RANO measures, respectively.Conclusions. Our automated algorithm demonstrates potential utility for evaluating tumor burden in complex posttreatment settings, although further validation in multicenter clinical trials will be needed prior to widespread implementation.
机译:背景。 MRI纵向测量神经胶质瘤负担是治疗反应评估的基础。在这项研究中,我们开发了一种深度学习算法,该算法可根据神经肿瘤学中的反应评估自动分割异常的液体减毒倒置恢复(FLAIR)高强度和增强对比的肿瘤,量化肿瘤体积以及最大二维直径的乘积( RANO)标准(AutoRANO)。本研究使用了两个队列的患者。一个由来自4个机构的843例低度或高级神经胶质瘤患者的843例术前MRI组成,第二个由来自54例新诊断的胶质母细胞瘤的患者713例术后纵向MRI访视组成(每个患者均接受2例预处理的“基线” MRI)。 1个机构。结果。自动生成的FLAIR高信号量,增强对比的肿瘤量和AutoRANO对于双基线访视具有很高的重复性,术后GBM患者队列的组内相关系数(ICC)分别为0.986、0.991和0.977。 。此外,在手动和自动测量的肿瘤体积之间存在高度一致性,术前FLAIR高信号,术后FLAIR高信号和术后造影剂增强的肿瘤体积的ICC值分别为0.915、0.924和0.965。最后,用于比较人工和自动得出的肿瘤负担的纵向变化的ICC在FLAIR高信号量,增强对比的肿瘤量和RANO量度上分别为0.917、0.966和0.850。尽管在广泛实施之前仍需要在多中心临床试验中进行进一步验证,但我们的自动算法证明了在复杂的后处理环境中评估肿瘤负荷的潜在效用。

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