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ZFNet模型在胶质瘤MRI诊断中的应用
引用本文:井奚月,乔婕,么秀华,徐立霞,闫华.ZFNet模型在胶质瘤MRI诊断中的应用[J].中国现代神经疾病杂志,2021(3):156-161.
作者姓名:井奚月  乔婕  么秀华  徐立霞  闫华
作者单位:天津市环湖医院天津市神经外科研究所天津市脑血管和神经退行性疾病重点实验室
基金项目:国家自然科学基金青年科学基金资助项目(项目编号:81501035);天津市科技计划项目(项目编号:20JCYBJC00960)。
摘    要:研究背景胶质瘤疾病负担较重,尽早确诊和及时治疗可有效延长无进展生存期,临床实践中初诊疑似胶质瘤时首选头部MRI检查,人工阅片存在诊断结果不一致和阅片效率下降的缺陷,而通过深度学习算法进行医学影像识别与诊断成为可能.本研究采用人工神经网络相关机器学习算法,辅助影像科医师对胶质瘤患者头部MRI图像的人工阅片,以期改善人工阅...

关 键 词:神经胶质瘤  人工智能  磁共振成像

The application of ZFNet model on the MRI diagnosis of glioma
ING Xi-yue,QIAO Jie,YAO Xiu-hua,XU Li-xia,YAN Hua.The application of ZFNet model on the MRI diagnosis of glioma[J].Chinese Journal of Contemporary Neurology and Neurosurgery,2021(3):156-161.
Authors:ING Xi-yue  QIAO Jie  YAO Xiu-hua  XU Li-xia  YAN Hua
Institution:(Tianjin Neurosurgical Institute,Tianjin Huanhu Hospital/Tianjin Key Laboratory of Cerebral Vascular and Neurodegenerative Diseases,Tianjin 300350,China)
Abstract:Background Glioma is a kind of intracranial space?occupying lesion,which causes heavy disease burden.For glioma patients,early accurate diagnosis and early treatment could effectively prolong the progression free survival.Suspected glioma patients would be firstly examined by MRI for diagnosis.The MRI images were mainly read by radiologists artificially.The diagnosis by different radiologists might be different,and the heavy workload might cause a decline in reading efficiency.In recent years,it is becoming possible to use deep learning technology for medical image recognition and diagnosis.This study used machine learning algorithms related to artificial neural network(ANN)to assist image practitioner in reading the head MRI images of patients with glioma,which may cause labor?saving,and could increase the efficiency of reading images and reduce the different results cause by different personal experiencse.Methods These images were from The Cancer Imaging Archive(TCIA)database.Format of these images was DICOM.And they were from 130 adult glioma cases,a total of 40036 copies.These images were randomly split as training set(28025 copies)and test set(12011 copies).Then in each set,images were split as"tumor image"and"normal image"according to medical experts'annotation.ZFNet model,a type of convolutional neural network,was used to build image recognition and classification model.The reinforcement learning curve was draw to observe the trend of accuracy of training changed with the training steps.Put the test set into the model,the overall classification accuracy of all MRI images,the positive predictive value,sensitivity,specificity and F1?measure of the tumor images were calculated.At the same time,AlexNet was also used to build a same model to compare with the ZFNet model by the prediction indexes of the classification ability of MRI images(the prediction ability of diagnosis of glioma).Results The training accuracy of ZFNet model was 99.7%after 38757 steps and of the AlexNet model was 98.23%after 37984 steps.After testing,the image prediction accuracy of all MRI images of ZFNet model was 84.42%(10140/12011),the positive predictive value of prediction of"tumor image"was 80.77%(4817/5964),the sensitivity was 86.93%(4817/5541),the specificity was 82.27%(5323/6470),and the F1?measure was 83.74%.The above indexes of AlexNet model were 80.74%(9698/12011),77.68%(4529/5830),81.74%(4529/5541),79.89%(5169/6470)and 79.66%,respectively.The classification performances of ZFNet model were satisfied and were superior to AlexNet model in each dimension.Conclusions ZFNet model has a good prediction performance ability in glioma brain MRI image classification,and it is able to provide a good technical support for establishing a glioma image aided diagnosis model.
Keywords:Glioma  Artificial intelligence  Magnetic resonance imaging
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