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基于T2WI的纹理分析和机器学习在鉴别肾乏脂血管平滑肌脂肪瘤和肾癌中的价值
引用本文:刘震昊,白旭,叶慧义,郭爱桃,林明权,左盼莉,王海屹. 基于T2WI的纹理分析和机器学习在鉴别肾乏脂血管平滑肌脂肪瘤和肾癌中的价值[J]. 磁共振成像, 2021, 12(2): 38-42. DOI: 10.12015/issn.1674-8034.2021.02.009
作者姓名:刘震昊  白旭  叶慧义  郭爱桃  林明权  左盼莉  王海屹
作者单位:中国人民解放军总医院第一医学中心放射诊断科,北京 100853;长治市中医研究所附属医院影像科,长治046000;中国人民解放军总医院第一医学中心放射诊断科,北京 100853;中国人民解放军总医院第一医学中心放射诊断科,北京 100853;中国人民解放军总医院第一医学中心病理科,北京 100853;香港城市大学电子工程系,香港 999077;慧影医疗科技(北京)有限公司,北京 100192;中国人民解放军总医院第一医学中心放射诊断科,北京 100853
摘    要:目的 探索基于T2WI的纹理分析和机器学习在区分肾乏脂血管平滑肌脂肪瘤(angiomyolipoma without visible fat,AMLwvf)和肾癌中的效能.材料与方法 回顾分析80例肾脏肿瘤,包括肾AMLwvf、肾透明细胞癌、乳头状肾细胞癌和肾嫌色细胞癌各20例.软件勾画得到感兴趣容积,提取特征.克鲁斯...

关 键 词:肾肿瘤  磁共振成像  纹理分析  机器学习  乏脂血管平滑肌脂肪瘤

Texture analysis and machine learning based on T2 weighted image in distinguishing renal angiomyolipoma without visible fat and renal cell carcinoma
LIU Zhenhao,BAI Xu,YE Huiyi,GUO Aitao,LIN Mingquan,ZUO Panli,WANG Haiyi. Texture analysis and machine learning based on T2 weighted image in distinguishing renal angiomyolipoma without visible fat and renal cell carcinoma[J]. Chinese Journal of Magnetic Resonance Imaging, 2021, 12(2): 38-42. DOI: 10.12015/issn.1674-8034.2021.02.009
Authors:LIU Zhenhao  BAI Xu  YE Huiyi  GUO Aitao  LIN Mingquan  ZUO Panli  WANG Haiyi
Affiliation:(Department of Radiology,the first medical center of Chinese PLA General Hospital,Beijing 100853,China;Department of Radiology,Affiliated Hospital of Changzhi Institute of Traditional Chinese Medicine,Changzhi 046000,China;Department of Pathology,the first medical center of Chinese PLA General Hospital,Beijing 100853,China;Department of Electronic Engineering,City University of Hong Kong,Hong Kong 999077,China;Innovation and Collaboration Center,Huiying Medical Technology(Beijing)Co.,Ltd,Beijing 100192,China)
Abstract:Objective:To distinguish between renal angiomyolipoma without visible fat(AMLwvf)and renal cell carcinoma(RCC)using T2WI texture analysis and machine learning.Materials and Methods:80 cases of renal tumors were analyzed retrospectively,including AMLwvf(n=20),clear cell renal cell carcinoma(n=20),papillary renal cell carcinoma(n=20)and chromophobe renal cell carcinoma(n=20).Lesions were delineated on software by two radiologists to extract the corresponding volumes of interest(VOI)and then 93 features were generated.The Kruskal Wallis test showed that there was no significant difference between renal carcinoma subtypes,so renal carcinoma subtypes were combined into one group(renal carcinoma,n=60).Univariable analysis was carried out through Mann-Whitney U test and Holm-Bonferroni method to find the best features and analyze the diagnostic performance.Modeling with multiple features:after the primary selection of features by Pearson correlation coefficient,the C5.0 node of IBM SPSS modeler software calculated the relative importance ranking of features.Top 2,3,4 and 5 most important features were used to form 4 feature subsets.Decision tree C5.0 model was built with or without boosting.The differentiation and generalization ability of each model was evaluated to find the best one as the final model.Results:Univariable analysis:after Holm-Bonferroni correction,four different features were screened:minimum,10 percentile,difference variance and contrast.The area under the curve was 0.888,0.837,0.789 and 0.777,respectively.The range of positive predictive value was 50.00%—69.57%.Modeling with multiple features:8 decision tree C5.0 models were constructed.The area under the curve of final model was 0.950.The sensitivity,specificity,positive predictive value,negative predictive value and accuracy of final model were 90.00%,100%,100%,96.77%and 97.5%,respectively.The accuracy based on cross validation is 95.0%.Conclusions:Univariable analysis based on T2WI has limited clinical application value because of its low positive predictive value.Decision tree C5.0 model has high accuracy and good generalization ability to distinguish AMLwvf and RCC,which is helpful to make reasonable treatment plan in clinic.
Keywords:kidney neoplasms  magnetic resonance imaging  texture analysis  machine learning  angiomyolipoma without visible fat
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