Follow
Subha D.P
Subha D.P
Associate Professor
Verified email at nitc.ac.in
Title
Cited by
Cited by
Year
EEG signal analysis: a survey
DP Subha, PK Joseph, R Acharya U, CM Lim
Journal of medical systems 34, 195-212, 2010
7142010
Automated EEG-based screening of depression using deep convolutional neural network
UR Acharya, SL Oh, Y Hagiwara, JH Tan, H Adeli, DP Subha
Computer methods and programs in biomedicine 161, 103-113, 2018
5372018
A novel depression diagnosis index using nonlinear features in EEG signals
UR Acharya, VK Sudarshan, H Adeli, J Santhosh, JEW Koh, ...
European neurology 74 (1-2), 79-83, 2015
2452015
Automated Depression Detection Using Deep Representation and Sequence Learning with EEG Signals
AUR Ay B, Yildirim O, Talo M, Baloglu UB, Aydin G, PuthankattilS D
Journal of Medical Systems 43 (7), 205, 2019
221*2019
Classification of EEG signals in normal and depression conditions by ANN using RWE and signal entropy
S D.P., PK Joseph
Journal of Mechanics in Medicine and Biology 12 (4), 1240019, 2012
1242012
Depression diagnosis support system based on EEG signal entropies
O Faust, PCA Ang, SD Puthankattil, PK Joseph
Journal of mechanics in medicine and biology 14 (03), 1450035, 2014
1192014
Prediction of depression from EEG signal using long short term memory (LSTM)
SD Kumar, DP Subha
2019 3rd international conference on trends in electronics and informatics …, 2019
952019
Complex network analysis of MCI-AD EEG signals under cognitive and resting state
SDP Surya Das
Brain Research 1735 (146743), 2020
462020
Automated Diagnosis of Depression Electroencephalograph Signals Using Linear Prediction Coding and Higher Order Spectra Features
GM 4. Bairy, OS Lih, Y Hagiwara, SD Puthankattil, O Faust, UC Niranjan, ...
Journal of Medical Imaging and Health Informatics 7 (8), 1857-1862, 2017
442017
Performance analysis of deep learning CNN in classification of depression EEG signals
P Sandheep, S Vineeth, M Poulose, DP Subha
TENCON 2019-2019 IEEE Region 10 Conference (TENCON), 1339-1344, 2019
412019
Analysis of EEG signals using wavelet entropy and approximate entropy: A case study on depression patients
SD Puthankattil, PK Joseph
International Journal of Bioengineering and Life Sciences 8 (7), 430-434, 2014
372014
EEG-based automated detection of schizophrenia using long short-term memory (LSTM) network
A Nikhil Chandran, K Sreekumar, DP Subha
Advances in Machine Learning and Computational Intelligence: Proceedings of …, 2021
332021
Analysis of long range dependence in the EEG signals of Alzheimer patients
TN John, SD Puthankattil, R Menon
Cognitive Neurodynamics 12, 183-199, 2018
302018
Automated classification of depression EEG signals using wavelet entropies and energies
GM Bairy, UC Niranjan, SD Puthankattil
Journal of Mechanics in Medicine and Biology 16 (03), 1650035, 2016
282016
A hybrid method of artifact removal of visual evoked-EEG
SDP 2. Priyalakshmi Sheela
Journal of Neuroscience Methods 336, 108638, 2020
262020
EEG signal processing: A survey
DP Subha, KP Joseph, UR Acharya, CM Lim
Journal of Medical Systems 34 (2), 195-212, 2010
222010
Half-wave segment feature extraction of EEG signals of patients with depression and performance evaluation of Neural network Classifiers
S D.P., PK Joseph
Journal of Mechanics in Medicine and Biology 17 (2), 1750006, 2017
122017
Exploration of time–frequency reassignment and homologous inter-hemispheric asymmetry analysis of MCI–AD brain activity
PSDNRM T. Nimmy John
BMC Neuroscience 20 (38), 38, 2019
102019
Event related potential analysis techniques for autism spectrum disorders: A review
P Sheela, SD Puthankattil
International Journal of Developmental Neuroscience 68 (72-82), 2018
72018
Automated detection and screening of depression using continuous wavelet transform with electroencephalogram signals
U Raghavendra, A Gudigar, Y Chakole, P Kasula, DP Subha, NA Kadri, ...
Expert Systems 40 (4), e12803, 2023
62023
The system can't perform the operation now. Try again later.
Articles 1–20