Diagnostic accuracy study of automated stratification of Alzheimer's disease and mild cognitive impairment via deep learning based on MRI

被引:6
作者
Chen, Xiaowen [1 ]
Tang, Mingyue [2 ]
Liu, Aimin [1 ]
Wei, Xiaoqin [1 ]
机构
[1] North Sichuan Med Coll, Sch Med Imaging, 234 Fujiang Rd, Nanchong 637000, Peoples R China
[2] North Sichuan Med Coll, Sch Basic Med & Forens Med, Nanchong, Peoples R China
关键词
Alzheimer's disease (AD); functional magnetic resonance imaging (functional MRI); deep convolutional neural networks (deep CNN); iterated random forest (iterated RF); Alzheimer's Disease Neuroimaging Initiative (ADNI); CLASSIFICATION; PREDICTION;
D O I
10.21037/atm-22-2961
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background: Alzheimer's disease (AD) is a widespread neurodegenerative disease that mostly affects the elderly population. Given its prevalence, a precise and efficient stratification system based on AD symptomology that uses functional magnetic resonance imaging (MRI) has great potential in the clinical diagnosis and prognosis estimation of AD patients. It was evident that deep learning methods have performed extremely well in the field of automated stratification of Al) based on MRI because of their high predicting accuracy and reliability. Methods: We proposed a deep convolutional neural network (CNN) and iterated random forest (RF) architecture for MRI image stratification by both anatomical location and image modality using the Alzheimer's Disease Neuroimaging Initiative (ADNI) database. We employed 3 cross-sectional data sets from the ADNI to conduct our binary-stratification [AD and normal controls (NCs), or AD and mild cognitive impairment (MCI)], and multi-stratification (AD, MCI, and NCs) process using MRI. And the accuracy, recall, specificity, area under the curve of receiver operating characteristic curve (AUC), Fl and Matthew's correlation coefficient (MCC) scores to assess accuracy of auxiliary clinical diagnoses. Results: Compared to other combinations of algorithms, our model obtained remarkable overall stratification accuracies in all different classification sets. In terms of AD vs. MCI, the mean training AUC of the 3 runs were 85.1% in 95% confidence intervals (CIs). In terms of AD vs. NC, the mean training AUC of the 3 runs was 90.6% in 95% CIs. In terms of the 3 stratifications of AD, MCI, and NC, relative precision, recall, and specificity for each category in the training test (TS) were all near 89%, while the F1 and MCC scores of both sets were 59.9% and 59.5%, respectively. Conclusions: Using a deep CNN and iterated RF architecture, we showed that brain image stratification is a promising means for evaluating AD, and examining the underlying etiology of the disease, by applying computer and medical images to achieve the early auxiliary diagnosis of AD. However, we still have a long way to go from the discovery of image markers to clinical application.
引用
收藏
页数:12
相关论文
共 43 条
[31]   A Survey of Alzheimer's Disease Early Diagnosis Methods for Cognitive Assessment [J].
Montenegro, Juan Manuel Fernandez ;
Villarini, Barbara ;
Angelopoulou, Anastassia ;
Kapetanios, Epaminondas ;
Garcia-Rodriguez, Jose ;
Argyriou, Vasileios .
SENSORS, 2020, 20 (24) :1-23
[32]   Magnetic Resonance Imaging in Animal Models of Alzheimer's Disease Amyloidosis [J].
Ni, Ruiqing .
INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2021, 22 (23)
[33]   Using machine learning to quantify structuralMRIneurodegeneration patterns of Alzheimer's disease into dementia score: Independent validation on 8,834 images from ADNI, AIBL, OASIS, and MIRIAD databases [J].
Popuri, Karteek ;
Ma, Da ;
Wang, Lei ;
Beg, Mirza Faisal .
HUMAN BRAIN MAPPING, 2020, 41 (14) :4127-4147
[34]   Neuroimaging modality fusion in Alzheimer's classification using convolutional neural networks [J].
Punjabi, Arjun ;
Martersteck, Adam ;
Wang, Yanran ;
Parrish, Todd B. ;
Katsaggelos, Aggelos K. .
PLOS ONE, 2019, 14 (12)
[35]   Multivariate Deep Learning Classification of Alzheimer's Disease Based on Hierarchical Partner Matching Independent Component Analysis [J].
Qiao, Jianping ;
Lv, Yingru ;
Cao, Chongfeng ;
Wang, Zhishun ;
Li, Anning .
FRONTIERS IN AGING NEUROSCIENCE, 2018, 10
[36]   Development and validation of an interpretable deep learning framework for Alzheimer's disease classification [J].
Qiu, Shangran ;
Joshi, Prajakta S. ;
Miller, Matthew, I ;
Xue, Chonghua ;
Zhou, Xiao ;
Karjadi, Cody ;
Chang, Gary H. ;
Joshi, Anant S. ;
Dwyer, Brigid ;
Zhu, Shuhan ;
Kaku, Michelle ;
Zhou, Yan ;
Alderazi, Yazan J. ;
Swaminathan, Arun ;
Kedar, Sachin ;
Saint-Hilaire, Marie-Helene ;
Auerbach, Sanford H. ;
Yuan, Jing ;
Sartor, E. Alton ;
Au, Rhoda ;
Kolachalama, Vijaya B. .
BRAIN, 2020, 143 :1920-1933
[37]   A review on neuroimaging-based classification studies and associated feature extraction methods for Alzheimer's disease and its prodromal stages [J].
Rathore, Saima ;
Habes, Mohamad ;
Iftikhar, Muhammad Aksam ;
Shacklett, Amanda ;
Davatzikos, Christos .
NEUROIMAGE, 2017, 155 :530-548
[38]   The Identification of Alzheimer's Disease Using Functional Connectivity Between Activity Voxels in Resting-State fMRI Data [J].
Shi, Yuhu ;
Zeng, Weiming ;
Deng, Jin ;
Nie, Weifang ;
Zhang, Yifei .
IEEE JOURNAL OF TRANSLATIONAL ENGINEERING IN HEALTH AND MEDICINE, 2020, 8
[39]   Network-based analysis of genetic variants associated with hippocampal volume in Alzheimer's disease: a study of ADNI cohorts [J].
Song, Ailin ;
Yan, Jingwen ;
Kim, Sungeun ;
Risacher, Shannon Leigh ;
Wong, Aaron K. ;
Saykin, Andrew J. ;
Shen, Li ;
Greene, Casey S. .
BIODATA MINING, 2016, 9
[40]   A six stage approach for the diagnosis of the Alzheimer's disease based on fMRI data [J].
Tripoliti, Evanthia E. ;
Fotiadis, Dimitrios I. ;
Argyropoulou, Maria ;
Manis, George .
JOURNAL OF BIOMEDICAL INFORMATICS, 2010, 43 (02) :307-320