Deep Learning for Alzheimer Diagnostics and Decision Support

Alzheimer’s Disease is the cause of 60-70% of cases of Dementia, costs associated to diagnosis, treatment and care of patients with it is estimated to be in the range of a hundred billion dollars in USA. This blog post have some recent papers related to using Deep Learning for diagnostics and decision support related to Alzheimer’s disease.

  1. Clinical decision support for Alzheimer’s disease based on deep learning and brain network
    – Authors: C Hu, R Ju, Y Shen, P Zhou, Q Li (2016)
  2. Classification of Alzheimer’s Disease using fMRI Data and Deep Learning Convolutional Neural Networks
    – Authors: S Sarraf, G Tofighi (2016)
  3. Non-Invasive Detection of Alzheimerâ s Disease-Multifractality of Emotional Speech
    – Authors: S Bhaduri, R Das, D Ghosh (2016)
  4. Alzheimer’s Disease Diagnostics by a Deeply Supervised Adaptable 3D Convolutional Network
    – Authors: E Hosseini (2016)
  5. Application of machine learning on postural control kinematics for the Diagnosis of Alzheimer’s disease
    – Authors: L Costa, Mf Gago, D Yelshyna, J Ferreira, Hd Silva… (2016)
  6. Multi-modality stacked deep polynomial network based feature learning for Alzheimer’s disease diagnosis
    – Authors: X Zheng, J Shi, Y Li, X Liu, Q Zhang (2016)
  7. Predicting Alzheimer’s disease: a neuroimaging study with 3D convolutional neural networks
    – Authors: A Payan, G Montana (2015)
  8. Linguistic Features Identify Alzheimer’s Disease in Narrative Speech
    – Authors: Kc Fraser, Ja Meltzer, F Rudzicz (2015)
  9. Detection of Alzheimer’s disease using group lasso SVM-based region selection
    – Authors: Z Sun, Y Fan, Bpf Lelieveldt, M Van De Giessen (2015)
  10. Anatomically Constrained Weak Classifier Fusion for Early Detection of Alzheimer’s Disease
    – Authors: D Domenger, P Coupé (2014)
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Deep Learning in combination with EEG electrical signals from the brain

eeg

EEG (Electroencephalography) is the measurement of electrical signals in the brain. It has long been used for medical purposes (e.g. diagnosis of epilepsy), and has in more recent years also been used in Brain Computer Interfaces (BCI) – note: if BCI is new to you don’t get overly excited about it, since these interfaces are still in my opinion quite premature. But they are definitely interesting in a longer term perspective .

This blog post gives an overview of recent research on Deep Learning in combination with EEG, e.g. r for classification, feature representation, diagnosis, safety (cognitive state of drivers) and hybrid methods (Computer Vision or Speech Recognition together with EEG and Deep Learning).

Best regards,

Amund Tveit

Diagnosis and Medicine

  1. Classification of Epileptic EEG Signals with Stacked Sparse Autoencoder Based on Deep Learning
    – Authors: Q Lin, S Ye, X Huang, S Li, M Zhang, Y Xue, Ws Chen (2016)
  2. Advanced use of EEG in drug development and personalized medicine
    – Authors: S Simpraga, R Alvarez (2016)
  3. Low-complexity algorithms for automatic detection of sleep stages and events for use in wearable EEG systems
    – Authors: Sa Imtiaz (2016)
  4. Predicting epileptic seizure from Electroencephalography (EEG) using hilbert huang transformation and neural network
    – Authors: Mo Rahman, Mn Karim (2015)
  5. Multi-Channel EEG based Sleep Stage Classification with Joint Collaborative Representation and Multiple Kernel Learning
    – Authors: J Shi, X Liu, Y Li, Q Zhang, Y Li, S Yin (2015)
  6. Superchords: decoding EEG signals in the millisecond range
    – Authors: R Normand, Ha Ferreira (2015)
  7. A novel motor imagery EEG recognition method based on deep learning
    – Authors: M Li, M Zhang, Y Sun (2016)

Brain Computer Interfaces

  1. Convolutional Networks for EEG Signal Classification in Non-Invasive Brain-Computer Interfaces
    – Authors: E Forney, C Anderson, W Gavin, P Davies (2016)
  2. Using Deep Learning for Human Computer Interface via Electroencephalography
    – Authors: S Redkar (2016)
  3. Deep learning EEG response representation for brain computer interface
    – Authors: L Jingwei, C Yin, Z Weidong (2015)

Cognition and Emotion

  1. Single-channel EEG-based mental fatigue detection based on deep belief network
    – Authors: P Li, W Jiang, F Su (2016)
  2. EEG-based prediction of driver’s cognitive performance by deep convolutional neural network
    – Authors: M Hajinoroozi, Z Mao, Tp Jung, Ct Lin, Y Huang (2016)
  3. EEG-based Driver Fatigue Detection using Hybrid Deep Generic Model
    – Authors: Pp San, Sh Ling, R Chai, Y Tran, A Craig, Ht Nguyen (2016)
  4. Mental State Recognition via Wearable EEG
    – Authors: P Bashivan, I Rish, S Heisig (2016)
  5. Single trial prediction of normal and excessive cognitive load through EEG feature fusion
    – Authors: P Bashivan, M Yeasin, Gm Bidelman (2016)
  6. Prediction of driver’s drowsy and alert states from EEG signals with deep learning
    – Authors: M Hajinoroozi, Z Mao, Y Huang (2016)
  7. Investigating Critical Frequency Bands and Channels for EEG-based Emotion Recognition with Deep Neural Networks
    – Authors: Wl Zheng, Bl Lu (2015)
  8. Deep learninig of EEG signals for emotion recognition
    – Authors: Y Gao, Hj Lee, Rm Mehmood (2015)
  9. EEG Based Emotion Identification Using Unsupervised Deep Feature Learning
    – Authors: X Li, P Zhang, D Song, G Yu, Y Hou, B Hu (2015)
  10. Feature extraction with deep belief networks for driver’s cognitive states prediction from EEG data
    – Authors: M Hajinoroozi, Tp Jung, Ct Lin, Y Huang (2015)
  11. Measurement Of Stress Intensity Using Eeg
    – Authors: V Tóth (2015)
  12. Revealing critical channels and frequency bands for emotion recognition from EEG with deep belief network
    – Authors: Wl Zheng, Ht Guo, Bl Lu (2015)
  13. Interpretable Deep Neural Networks for Single-Trial EEG Classification
    – Authors: I Sturm, S Bach, W Samek, Kr Müller (2016)

Hybrid methods – combining Deep Learning and EEG with other Deep Learning methods

  1. Improving Electroencephalography-Based Imagined Speech Recognition with a Simultaneous Video Data Stream
    – Authors: Sj Stolze (2016)
  2. A closed-loop system for rapid face retrieval by combining EEG and computer vision
    – Authors: Y Wang, L Jiang, B Cai, Y Wang, S Zhang, X Zheng (2015)
  3. Emotional Affect Estimation Using Video and EEG Data in Deep Neural Networks
    – Authors: A Frydenlund, F Rudzicz (2015)

Feature representation and Classification

  1. Improving EEG feature learning via synchronized facial video
    – Authors: X Li, X Jia, G Xun, A Zhang (2016)
  2. Decoding EEG and LFP signals using deep learning: heading TrueNorth
    – Authors: E Nurse, Bs Mashford, Aj Yepes, I Kiral (2016)
  3. Fast and efficient rejection of background waveforms in interictal EEG
    – Authors: E Bagheri, J Jin, J Dauwels, S Cash, Mb Westover (2016)
  4. Class-wise Deep Dictionaries for EEG Classification
    – Authors: P Khurana, A Majumdar, R Ward (2016)
  5. EEG-based affect states classification using Deep Belief Networks
    – Authors: H Xu, Kn Plataniotis (2016)
  6. Feature Learning from Incomplete EEG with Denoising Autoencoder
    – Authors: J Li, Z Struzik, L Zhang, A Cichocki (2014)
  7. Joint optimization of algorithmic suites for EEG analysis
    – Authors: E Santana, Aj Brockmeier, Jc Principe (2014)
  8. Deep Extreme Learning Machine and Its Application in EEG Classification
    – Authors: S Ding, N Zhang, X Xu, L Guo, J Zhang (2014)
  9. Deep Feature Learning for EEG Recordings
    – Authors: S Stober, A Sternin, Am Owen, Ja Grahn (2015)
  10. A Multichannel Deep Belief Network for the Classification of EEG Data
    – Authors: Am Al (2015)
  11. Learning Representations from EEG with Deep Recurrent-Convolutional Neural Networks
    – Authors: P Bashivan, I Rish, M Yeasin, N Codella (2015)
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