Abstract

Early detection is critical for effective management of Alzheimer’s disease (AD) and screening for mild cognitive impairment (MCI) is common practice. Among several deep-learning techniques that have been applied to assessing structural brain changes on magnetic resonance imaging (MRI), convolutional neural network (CNN) has gained popularity due to its superb efficiency in automated feature learning with the use of a variety of multilayer perceptrons. Meanwhile, ensemble learning (EL) has shown to be beneficial in the robustness of learning-system performance via integrating multiple models. Here, we proposed a classifier ensemble developed by combining CNN and EL, i.e., the CNN-EL approach, to identify subjects with MCI or AD using MRI: i.e., classification between (1) AD and healthy cognition (HC), (2) MCIc (MCI patients who will convert to AD) and HC, and (3) MCIc and MCInc (MCI patients who will not convert to AD). For each binary classification task, a large number of CNN models were trained applying a set of sagittal, coronal, or transverse MRI slices; these CNN models were then integrated into a single ensemble. Performance of the ensemble was evaluated using stratified fivefold cross-validation method for 10 times. The number of the intersection points determined by the most discriminable slices separating two classes in a binary classification task among the sagittal, coronal, and transverse slice sets, transformed into the standard Montreal Neurological Institute (MNI) space, acted as an indicator to assess the ability of a brain region in which the points were located to classify AD. Thus, the brain regions with most intersection points were considered as those mostly contributing to the early diagnosis of AD. The result revealed an accuracy rate of 0.84 ± 0.05, 0.79 ± 0.04, and 0.62 ± 0.06, respectively, for classifying AD vs. HC, MCIc vs. HC, and MCIc vs. MCInc, comparable to previous reports and a 3D deep learning approach (3D-SENet) based on a more state-of-the-art and popular Squeeze-and-Excitation Networks model using channel attention mechanism. Notably, the intersection points accurately located the medial temporal lobe and several other structures of the limbic system, i.e., brain regions known to be struck early in AD. More interestingly, the classifiers disclosed multiple patterned MRI changes in the brain in AD and MCIc, involving these key regions. These results suggest that as a data-driven method, the combined CNN and EL approach can locate the most discriminable brain regions indicated by the trained ensemble model while the generalization ability of the ensemble model was maximized to successfully capture AD-related brain variations early in the disease process; it can also provide new insights into understanding the complex heterogeneity of whole-brain MRI changes in AD. Further research is needed to examine the clinical implication of the finding, capability of the advocated CNN-EL approach to help understand and evaluate an individual subject’s disease status, symptom burden and progress, and the generalizability of the advocated CNN-EL approach to locate the most discriminable brain regions in the detection of other brain disorders such as schizophrenia, autism, and severe depression, in a data-driven way.

Highlights

  • Alzheimer’s disease (AD) is a chronic, progressive, and irreversible neurodegenerative disease clinically manifested by amnesia, cognitive dysfunction, and gradual loss of multiple other brain functions and daily living independency (Ulep et al, 2018)

  • We proposed a novel convolutional neural networks (CNNs)–ensemble learning (EL) approach based on an established eight-layer CNN network structure (Wang et al, 2018), to automatically retrieve features from brain magnetic resonance imaging (MRI) data that can be used to differentiate subjects with clinical diagnosed AD and mild cognitive impairment (MCI) from healthy cognition (HC), and those with MCIc and MCInc

  • To address the objective of the study, i.e., binary classification of AD or MCIc vs. HC, and MCIc vs. MCInc, three corresponding classifier ensembles based on the three slice orientation groups, i.e., classifier ensembles based on three-axis slices, were trained

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Summary

Introduction

Alzheimer’s disease (AD) is a chronic, progressive, and irreversible neurodegenerative disease clinically manifested by amnesia, cognitive dysfunction, and gradual loss of multiple other brain functions and daily living independency (Ulep et al, 2018). Amnestic mild cognitive impairment (MCI) is a transitional stage between cognitively normal aging and AD, and patients with MCI are more likely to develop AD than age-matched healthy cognition (HC) (Liu et al, 2014). A large number of promising machine learning applications have used MRI for AD prediction (Mateos-Pérez et al, 2018), which include random forests (RF) (Tripoliti et al, 2011), support vector machine (SVM) (Leemput et al, 2002), and boosting algorithms (Hinrichs et al, 2009). Even so, existing machine learning approaches typically involve manual selection of predefined brain regions of interest (ROIs) based on known MRI features of AD. Given the limited understanding of definitive MRI biomarkers for AD, it is likely that pre-selected ROIs cannot include all the information potentially useful to uncover the complexity of AD. Manual selection can be prone to subjective errors and be time-consuming and labor-intensive (Li et al, 2018)

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