Publications from You Snooze, You Win: the PhysioNet/Computing in Cardiology Challenge 2018
The papers listed below were presented at Computers in Cardiology
2018. Please cite this publication when
referencing any of these papers. These papers have been made available
under the terms of the Creative Commons Attribution License 3.0
(CCAL). We wish to thank
all of the authors for their contributions.
This paper is an introduction to the challenge topic, with a summary of
the challenge results and a discussion of their implications:
Mohammad M Ghassemi, Benjamin E Moody, Li-wei H Lehman, Christopher
Song, Qiao Li, Haoqi Sun, Roger G Mark, M Brandon Westover, Gari D
Clifford. You Snooze, You Win: the PhysioNet/Computing in
Cardiology Challenge 2018.
The remaining papers were presented by participants in the Challenge,
who describe their approaches to the challenge problem.
Publications listed alphabetically by author
- Tanuka Bhattacharjee, Deepan Das, Shahnawaz Alam, Achuth Rao M V,
Prasanta Kumar Ghosh, Ayush Ranjan Lohani, Rohan Banerjee, Anirban
Dutta Choudhury, Arpan Pal. SleepTight: Identifying Sleep
Arousals Using Inter and Intra-Relation of Multimodal
Signals
- Jia Dongya, Shengfeng Yu, Cong Yan, Wei Zhao, Jing Hu, Hongmei
Wang, Tianyuan You. Deep Learning with Convolutional Neural
Networks for Sleep Arousal Detection
- Runnan He, Kuanquan Wang, Yang Liu, Na Zhao, Yongfeng Yuan, Qince
Li, Henggui Zhang. Identification of Arousals With Deep
Neural Networks Using Different Physiological
Signals
- Matthew Howe-Patterson, Bahareh Pourbabaee, Frederic Benard.
Automated Detection of Sleep Arousals From Polysomnography Data
Using a Dense Convolutional Neural Network
- Ivan Lazić, Nikša Jakovljević, Danica Despotović, Tatjana
Lončar-Turukalo. Automatic Detection of Respiratory Effort
Related Arousals From Polysomnographic Recordings
- Haoqi Li, Qineng Cao, Yizhou Zhong, Yun Pan. Sleep Arousal
Detection Using End-to-End Deep Learning Method Based on
Multi-Physiological Signals
- Daniel Miller, Andrew Ward, Nicholas Bambos. Automatic
Sleep Arousal Identification From Physiological Waveforms Using Deep
Learning
- Naimahmed Nesaragi, Shubha Majumder, Ashish Sharma, Kouhyar
Tavakolian, Shivnarayan Patidar. Application of Recurrent
Neural Network for the Prediction of Target Non-Apneic Arousal
Regions in Physiological Signals
- Saman Parvaneh, Jonathan Rubin, Ali Samadani, Gajendra
Katuwal. Automatic Detection of Arousals During Sleep Using
Multiple Physiological Signals
- Andrea Patane, Shadi Ghiasi, Enzo Pasquale Scilingo, Marta
Kwiatkowska. Automated Recognition of Sleep Arousal Using
Multimodal and Personalized Deep Ensembles of Neural
Networks
- Filip Plesinger, Petr Nejedly, Ivo Viscor, Petr Andrla, Josef
Halamek, Pavel Jurak. Automated Sleep Arousal Detection
Based on EEG Envelograms
- Shahab Rezaei, Sadaf Moharreri, Nader Jafarnia Dabanloo, Saman
Parvaneh. Age and Changes in Extracted Features of Lagged
Poincare Plot
- Nadi Sadr and Philip de Chazal. Automatic Scoring of
Non-Apnoea Arousals Using the Polysomnogram
- Aven Schellenberger, Kilin Shi, Melanie Mai, Jan Philipp
Wiedemann, Tobias Steigleder, Björn Eskofier, Robert Weigel,
Alexander Kölpin. Detecting Respiratory Effort-Related
Arousals in Polysomnographic Data Using LSTM
Networks
- Yinghua Shen.Effectiveness of a Convolutional Neural
Network in Sleep Arousal Classification Using Multiple Physiological
Signals.
- Niranjan Sridhar and Ali Shoeb. Evaluating Convolutional
and Recurrent Neural Network Architectures for Respiratory-Effort
Related Arousal Detection during Sleep.
- Sandya Subramanian, Shubham Chamadia, Sourish Chakravarty. Arousal Detection in Obstructive Sleep Apnea using
Physiology-Driven Features.
- János Szalma, András Bánhalmi, Vilmos Bilicki. Detection
of Respiratory Effort-Related Arousals Using a Hidden Markov Model
and Random Decision Forest.
- Heiðar Már Þráinsson, Hanna Ragnarsdóttir, Guðni Fannar
Kristjansson, Bragi Marinósson, Eysteinn Finnsson, Eysteinn
Gunnlaugsson, Sigurður Ægir Jónsson, Jón Skírnir Ágústsson, Halla
Helgadóttir. Automatic Detection of Target Regions of
Respiratory Effort-Related Arousals Using Recurrent Neural
Networks.
- Edwar Macias Toro, Antoni Morell, Javier Serrano, Jose Lopez
Vicario. Knowledge extraction based on wavelets and DNN for
classification of physiological signals: Arousals
case.
- Bálint Varga, Márton Görög, Péter Hajas. Using Auxiliary
Loss to Improve Sleep Arousal Detection With Neural
Network. (CinC2018-247.pdf)
- Philip Warrick and Masun Nabhan Homsi.Sleep Arousal
Detection From Polysomnography Using the Scattering Transform and
Recurrent Neural Networks.
- Morteza Zabihi, Ali Bahrami Rad, Simo Särkkä, Serkan Kiranyaz,
Aggelos K. Katsaggelos, Moncef Gabbouj. Automatic Sleep
Arousal Detection Using Multimodal Biosignal
Analysis.
Supported by the National Institute of Biomedical Imaging and Bioengineering (NIBIB) under NIH grant number R01EB030362.
© PhysioNet Challenges. Website content licensed under the Creative Commons Attribution 4.0 International Public License.
Back