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典型文献
Prediction of high infiltration levels in pituitary adenoma using MRI-based radiomics and machine learning
文献摘要:
Background::Infiltration is important for the surgical planning and prognosis of pituitary adenomas. Differences in preoperative diagnosis have been noted. The aim of this article is to assess the accuracy of machine learning analysis of texture-derived parameters of pituitary adenoma obtained from preoperative MRI for the prediction of high infiltration.Methods::A total of 196 pituitary adenoma patients (training set: n = 176; validation set: n = 20) were enrolled in this retrospective study. In total, 4120 quantitative imaging features were extracted from CE-T1 MR images. To select the most informative features, the least absolute shrinkage and selection operator (LASSO) and variance threshold method were performed. The linear support vector machine (SVM) was used to fit the predictive model based on infiltration features. Furthermore, the receiver operating characteristic curve (ROC) was generated, and the diagnostic performance of the model was evaluated by calculating the area under the curve (AUC), accuracy, precision, recall, and F1 value. Results::A variance threshold of 0.85 was used to exclude 16 features with small differences using the LASSO algorithm, and 19 optimal features were finally selected. The SVM models for predicting high infiltration yielded an AUC of 0.86 (sensitivity: 0.81, specificity 0.79) in the training set and 0.73 (sensitivity: 0.87, specificity: 0.80) in the validation set. The four evaluation indicators of the predictive model achieved good diagnostic capabilities in the training set (accuracy: 0.80, precision: 0.82, recall: 0.81, F1 score: 0.81) and independent verification set (accuracy: 0.85, precision: 0.93, recall: 0.87, F1 score: 0.90).Conclusions::The radiomics model developed in this study demonstrates efficacy for the prediction of pituitary adenoma infiltration. This model could potentially aid neurosurgeons in the preoperative prediction of infiltration in PAs and contribute to the selection of ideal surgical strategies.
文献关键词:
Pituitary adenoma;Machine learning;Preoperative prediction;Magnetic resonance imaging;Infiltration
作者姓名:
Zhang Chao;Heng Xueyuan;Neng Wenpeng;Chen Haixin;Sun Aigang;Li Jinxing;Wang Mingguang
作者机构:
Department of Neurosurgery, Linyi People’s Hospital, 27 Jiefang Road, Linyi, Shandong 27600, People’s Republic of China;Ebond (Beijing) Intelligence Technology Co., Ltd, Beijing 100192, People’s Republic of China
引用格式:
[1]Zhang Chao;Heng Xueyuan;Neng Wenpeng;Chen Haixin;Sun Aigang;Li Jinxing;Wang Mingguang-.Prediction of high infiltration levels in pituitary adenoma using MRI-based radiomics and machine learning)[J].中华神经外科杂志(英文),2022(04):221-229
A类:
neurosurgeons
B类:
Prediction,high,infiltration,levels,pituitary,using,radiomics,machine,learning,Background,Infiltration,important,surgical,planning,prognosis,adenomas,Differences,preoperative,diagnosis,have,been,noted,aim,this,article,assess,accuracy,analysis,texture,derived,parameters,obtained,from,prediction,Methods,total,patients,training,set,validation,were,enrolled,retrospective,study,quantitative,imaging,features,extracted,CE,images,To,most,informative,least,absolute,shrinkage,selection,operator,LASSO,variance,threshold,method,performed,linear,support,vector,was,used,fit,predictive,Furthermore,receiver,operating,characteristic,curve,generated,diagnostic,performance,evaluated,by,calculating,area,under,precision,recall,value,Results,exclude,small,differences,algorithm,optimal,finally,selected,models,predicting,yielded,sensitivity,specificity,four,evaluation,indicators,achieved,good,capabilities,score,independent,verification,Conclusions,developed,demonstrates,efficacy,This,could,potentially,aid,PAs,contribute,ideal,strategies,Pituitary,Machine,Preoperative,Magnetic,resonance
AB值:
0.508886
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