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首页> 外文期刊>Journal of neuro-oncology. >Differentiation between treatment-related changes and progressive disease in patients with high grade brain tumors using support vector machine classification based on DCE MRI
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Differentiation between treatment-related changes and progressive disease in patients with high grade brain tumors using support vector machine classification based on DCE MRI

机译:使用基于DCE MRI的支持向量机分类区分高级别脑肿瘤患者的治疗相关变化和进行性疾病

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Differentiation between treatment-related changes and progressive disease (PD) remains a major clinical challenge in the follow-up of patients with high grade brain tumors. The aim of this study was to differentiate between treatment-related changes and PD using dynamic contrast enhanced (DCE) MRI. Twenty patients were scanned using conventional, DCE-MRI and MR spectroscopy (total of 44 MR scans). The enhanced lesion area was extracted using independent components analysis of the DCE data. Pharmacokinetic parameters were estimated from the DCE data based on the Extended-Tofts-Model. Voxel based classification for treatment-related changes versus PD was performed in a patient-wise leave-one-out manner, using a support vector machine classifier. DCE parameters, K-trans, v(e), k(ep) and v(p,) significantly differentiated between the tissue types. Classification results were validated using spectroscopy data showing significantly higher choline/creatine values in the extracted PD component compared to areas with treatment-related changes and normal appearing white matter, and high correlation between choline/creatine values and the percentage of the identified PD component within the lesion area (r = 0.77, p < 0.001). On the training data the sensitivity and specificity were 98 and 97 %, respectively, for the treatment-related changes component and 97 and 98 % for the PD component. This study proposes a methodology based on DCE-MRI to differentiate lesion areas into treatment-related changes versus PD, prospectively in each scan. Results may have major clinical importance for pre-operative planning, guidance for targeting biopsy, and early prediction of radiological outcomes in patients with high grade brain tumors.
机译:与治疗有关的变化与进行性疾病(PD)之间的区别仍然是对患有高级别脑肿瘤的患者进行随访的主要临床挑战。这项研究的目的是使用动态对比增强(DCE)MRI来区分治疗相关变化和PD。使用常规DCE-MRI和MR光谱仪对20例患者进行了扫描(总共44次MR扫描)。使用DCE数据的独立成分分析提取增强的病变区域。根据扩展的Tofts模型从DCE数据估算药代动力学参数。使用支持向量机分类器,以患者为目的,一劳永逸地对与PD相关的治疗相关变化进行了基于体素的分类。 DCE参数K-trans,v(e),k(ep)和v(p,)在组织类型之间有明显区别。使用光谱数据验证了分类结果,该数据显示,与具有治疗相关变化和正常出现白质的区域相比,提取的PD成分中胆碱/肌酸值明显更高,并且胆碱/肌酸值与所鉴定的PD成分百分比之间的相关性高病变面积(r = 0.77,p <0.001)。在训练数据上,与治疗相关的变化成分的敏感性和特异性分别为98%和97%,PD成分的敏感性和特异性分别为97%和98%。这项研究提出了一种基于DCE-MRI的方法,可预期在每次扫描中将病变区域区分为治疗相关的变化与PD。结果对于具有高度脑肿瘤的患者的术前计划,靶向活检指导以及放射学结果的早期预测可能具有重要的临床意义。

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