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使用机器学习方法从多参数磁共振图像中提取的肿瘤放射组学特征预测4级星形细胞瘤和胶质母细胞瘤的异柠檬酸脱氢酶(IDH)亚型。

Predicting IDH subtype of grade 4 astrocytoma and glioblastoma from tumor radiomic patterns extracted from multiparametric magnetic resonance images using a machine learning approach.

作者信息

Kandalgaonkar Pashmina, Sahu Arpita, Saju Ann Christy, Joshi Akanksha, Mahajan Abhishek, Thakur Meenakshi, Sahay Ayushi, Epari Sridhar, Sinha Shwetabh, Dasgupta Archya, Chatterjee Abhishek, Shetty Prakash, Moiyadi Aliasgar, Agarwal Jaiprakash, Gupta Tejpal, Goda Jayant S

机构信息

Department of Radiodiagnosis, Tata Memorial Center, Mumbai, India.

Homi Bhabha National Institute, Mumbai, India.

出版信息

Front Oncol. 2022 Sep 30;12:879376. doi: 10.3389/fonc.2022.879376. eCollection 2022.

Abstract

BACKGROUND AND PURPOSE

Semantic imaging features have been used for molecular subclassification of high-grade gliomas. Radiomics-based prediction of molecular subgroups has the potential to strategize and individualize therapy. Using MRI texture features, we propose to distinguish between IDH wild type and IDH mutant type high grade gliomas.

METHODS

Between 2013 and 2020, 100 patients were retrospectively analyzed for the radiomics study. Immunohistochemistry of the pathological specimen was used to initially identify patients for the IDH mutant/wild phenotype and was then confirmed by Sanger's sequencing. Image texture analysis was performed on contrast-enhanced T1 (T1C) and T2 weighted (T2W) MR images. Manual segmentation was performed on MR image slices followed by single-slice multiple sampling image augmentation. Both whole tumor multislice segmentation and single-slice multiple sampling approaches were used to arrive at the best model. Radiomic features were extracted, which included first-order features, second-order (GLCM-Grey level co-occurrence matrix), and shape features. Feature enrichment was done using LASSO (Least Absolute Shrinkage and Selection Operator) regression, followed by radiomic classification using Support Vector Machine (SVM) and a 10-fold cross-validation strategy for model development. The area under the Receiver Operator Characteristic (ROC) curve and predictive accuracy were used as diagnostic metrics to evaluate the model to classify IDH mutant and wild-type subgroups.

RESULTS

Multislice analysis resulted in a better model compared to the single-slice multiple-sampling approach. A total of 164 MR-based texture features were extracted, out of which LASSO regression identified 14 distinctive GLCM features for the endpoint, which were used for further model development. The best model was achieved by using combined T1C and T2W MR images using a Quadratic Support Vector Machine Classifier and a 10-fold internal cross-validation approach, which demonstrated a predictive accuracy of 89% with an AUC of 0.89 for each IDH mutant and IDH wild subgroup.

CONCLUSION

A machine learning classifier of radiomic features extracted from multiparametric MRI images (T1C and T2w) provides important diagnostic information for the non-invasive prediction of the IDH mutant or wild-type phenotype of high-grade gliomas and may have potential use in either escalating or de-escalating adjuvant therapy for gliomas or for using targeted agents in the future.

摘要

背景与目的

语义成像特征已用于高级别胶质瘤的分子亚分类。基于放射组学对分子亚组进行预测,有望制定个性化治疗策略。我们建议利用MRI纹理特征来区分异柠檬酸脱氢酶(IDH)野生型和IDH突变型高级别胶质瘤。

方法

回顾性分析2013年至2020年间100例患者的放射组学研究。病理标本的免疫组织化学用于初步确定IDH突变/野生表型的患者,随后通过桑格测序进行确认。在对比增强T1(T1C)加权和T2加权(T2W)MR图像上进行图像纹理分析。对MR图像切片进行手动分割,然后进行单切片多次采样图像增强。采用全肿瘤多层分割和单切片多次采样方法来构建最佳模型。提取放射组学特征,包括一阶特征、二阶(灰度共生矩阵,GLCM)特征和形状特征。使用套索(LASSO,最小绝对收缩和选择算子)回归进行特征富集,随后使用支持向量机(SVM)进行放射组学分类,并采用10折交叉验证策略进行模型开发。采用受试者操作特征(ROC)曲线下面积和预测准确性作为诊断指标,以评估区分IDH突变型和野生型亚组的模型。

结果

与单切片多次采样方法相比,多层分析产生了更好的模型。共提取了164个基于MR的纹理特征,其中LASSO回归确定了14个用于终点的独特GLCM特征,用于进一步的模型开发。通过使用二次支持向量机分类器和10折内部交叉验证方法,结合T1C和T2W MR图像实现了最佳模型,该模型对每个IDH突变型和IDH野生型亚组的预测准确性为89%,曲线下面积(AUC)为0.89。

结论

从多参数MRI图像(T1C和T2W)中提取的放射组学特征的机器学习分类器,为高级别胶质瘤IDH突变型或野生型表型的无创预测提供了重要诊断信息,可能在未来用于增加或减少胶质瘤辅助治疗剂量或使用靶向药物方面具有潜在用途。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/898d/9585657/05f58b3625b5/fonc-12-879376-g001.jpg

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