2019
DOI: 10.1007/s11517-019-01974-3
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Learning using privileged information improves neuroimaging-based CAD of Alzheimer’s disease: a comparative study

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Cited by 20 publications
(6 citation statements)
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“…In the CAD systems, machine learning is able to extract informative features that describe the inherent patterns from data and play a vital role in medical image analysis (Wernick et al, 2010;Wu et al, 2016;Erickson et al, 2017;Li et al, 2019). However, the structures of the medical images are very complex, and the feature selection step is still carried out by the human experts on the basis of their domainspecific knowledge.…”
Section: Introductionmentioning
confidence: 99%
“…In the CAD systems, machine learning is able to extract informative features that describe the inherent patterns from data and play a vital role in medical image analysis (Wernick et al, 2010;Wu et al, 2016;Erickson et al, 2017;Li et al, 2019). However, the structures of the medical images are very complex, and the feature selection step is still carried out by the human experts on the basis of their domainspecific knowledge.…”
Section: Introductionmentioning
confidence: 99%
“…• Supervised: AdaBoost with PI (Chen et al [21], Liu et al [22]), SVM+ for risk modelling (Ribeiro et al [23], [24]), SVM+ and multi-task learning (Liang and Cherkassky [25], Liang and Cherkassky [26], Liang et al [27], Cai and Cherkassky [28], Tang et al [29]), Regression Forests for facial feature detection with privileged head pose or gender (Yang and Patras [30]), image classification using privileged attributes, bounding box annotations, and textual descripting tags (Sharmanska et al [31], Sharmanska et al [32], Li et al [33], Wang and Ji [34], Yan et al [35], Rodríguez et al [36]), structured SVM (SSVM) prediction algorithm for image object localization using PI (Feyereisl et al [37]), unifying distillation and PI (Lopez-Paz et al [38]), multi-instance learning for action and event recognition with privileged web data (Niu et al [39]), knowledge transfer for neural networks (Vapnik and Izmailov [8]), image object detection using PI (Hoffman et al [40]), domain adaptation (Sarafianos et al [41]), multiview privileged SVMs (Tang et al [42]), deep learning under PI (Lambert et al [43]), PI for structured output prediction (Zhang et al [44]), label enhancement with multi-label learning (Zhu et al [45]), PI for the diagnosis of Alzheimer's disease (Li et al [46], Ganaie and Tanveer [47]), breast (Shaikh et al [48]) and liver (Zhang et al [49]) cancers, PI for image super-resolution using CNNs (Lee et al [50]), robust SVM+ (Li et al [9], Wu et al [51]), twin SVM with PI (Che et al [52]), robust twin SVM+ (Li et al [53]), Support Vector ...…”
Section: Related Work a Privileged Informationmentioning
confidence: 99%
“…Since 2013, deep learning has begun to gain considerable attention in AD detection research, with the number of published papers in this area increasing drastically since 2017 [5]. Early unsupervised methods used autoencoders or restricted Boltzmann machine methods to extract features that were then used for the classification of Alzheimer's disease [6]- [8]. Supervised learning applied to the diagnosis of Alzheimer's disease has been particularly well studied compared to unsupervised methods.…”
Section: Introductionmentioning
confidence: 99%