AI-Based Stroke Disease Prediction System Using Real-Time Electromyography Signals

被引:45
作者
Yu, Jaehak [1 ]
Park, Sejin [1 ]
Kwon, Soon-Hyun [1 ]
Ho, Chee Meng Benjamin [1 ]
Pyo, Cheol-Sig [1 ]
Lee, Hansung [2 ]
机构
[1] ETRI, Dept KSB Convergence Res, Daejeon 34129, South Korea
[2] Youngsan Univ, Sch Comp Engn, 288 Junam Ro, Yangsan 50510, Gyeongnam, South Korea
来源
APPLIED SCIENCES-BASEL | 2020年 / 10卷 / 19期
关键词
electromyography (EMG); stroke prediction; stroke disease analysis; artificial intelligence; machine learning; random forest; deep learning; long short-term memory (LSTM); 4TH INDUSTRIAL-REVOLUTION; CORONARY-HEART-DISEASE; RISK PROFILE; CHINESE POPULATION; RECURRENT STROKE; MODEL; SCALE;
D O I
10.3390/app10196791
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Stroke is a leading cause of disabilities in adults and the elderly which can result in numerous social or economic difficulties. If left untreated, stroke can lead to death. In most cases, patients with stroke have been observed to have abnormal bio-signals (i.e., ECG). Therefore, if individuals are monitored and have their bio-signals measured and accurately assessed in real-time, they can receive appropriate treatment quickly. However, most diagnosis and prediction systems for stroke are image analysis tools such as CT or MRI, which are expensive and difficult to use for real-time diagnosis. In this paper, we developed a stroke prediction system that detects stroke using real-time bio-signals with artificial intelligence (AI). Both machine learning (Random Forest) and deep learning (Long Short-Term Memory) algorithms were used in our system. EMG (Electromyography) bio-signals were collected in real time from thighs and calves, after which the important features were extracted, and prediction models were developed based on everyday activities. Prediction accuracies of 90.38% for Random Forest and of 98.958% for LSTM were obtained for our proposed system. This system can be considered an alternative, low-cost, real-time diagnosis system that can obtain accurate stroke prediction and can potentially be used for other diseases such as heart disease.
引用
收藏
页数:19
相关论文
共 54 条
[1]   Fourth Industrial Revolution for Development: The Relevance of Cloud Federation in Healthcare Support [J].
Ajayi, Olasupo O. ;
Bagula, Antoine B. ;
Ma, Kun .
IEEE ACCESS, 2019, 7 :185322-185337
[2]  
Amini L, 2013, INT J PREVENTIVE MED, V4, pS245
[3]  
Baigent C, 2002, BMJ-BRIT MED J, V324, P71, DOI 10.1136/bmj.324.7329.71
[4]   Prediction of stroke thrombolysis outcome using CT brain machine learning [J].
Bentley, Paul ;
Ganesalingam, Jeban ;
Jones, Anoma Lalani Carlton ;
Mahady, Kate ;
Epton, Sarah ;
Rinne, Paul ;
Sharma, Pankaj ;
Halse, Omid ;
Mehta, Amrish ;
Rueckert, Daniel .
NEUROIMAGE-CLINICAL, 2014, 4 :635-640
[5]   ACCURACY OF WEIGHTBEARING ESTIMATION BY STROKE VERSUS HEALTHY-SUBJECTS [J].
BOHANNON, RW ;
TINTIWALD, D .
PERCEPTUAL AND MOTOR SKILLS, 1991, 72 (03) :935-941
[6]  
BRAMER G R, 1988, World Health Statistics Quarterly, V41, P32
[7]   LONG-TERM RISK OF RECURRENT STROKE AFTER A FIRST-EVER STROKE - THE OXFORDSHIRE COMMUNITY STROKE PROJECT [J].
BURN, J ;
DENNIS, M ;
BAMFORD, J ;
SANDERCOCK, P ;
WADE, D ;
WARLOW, C .
STROKE, 1994, 25 (02) :333-337
[8]   Retrospective assessment of initial stroke severity - Comparison of the NIH Stroke Scale and the Canadian Neurological Scale [J].
Bushnell, CD ;
Johnston, DCC ;
Goldstein, LB .
STROKE, 2001, 32 (03) :656-660
[9]   On the use and utility of the Weibull model in the analysis of survival data [J].
Carroll, KJ .
CONTROLLED CLINICAL TRIALS, 2003, 24 (06) :682-701
[10]  
Center for Disease Control and Prevention, 1996, 3 NAT HLTH NUTR EX S