Machine learning to predict mortality after rehabilitation among patients with severe stroke

被引:59
作者
Scrutinio, Domenico [1 ]
Ricciardi, Carlo [1 ,2 ]
Donisi, Leandro [1 ,2 ]
Losavio, Ernesto [1 ]
Battista, Petronilla [1 ]
Guida, Pietro [1 ]
Cesarelli, Mario [1 ,3 ]
Pagano, Gaetano [1 ]
D'Addio, Giovanni [1 ]
机构
[1] IRCCS, Ist Clin Sci Maugeri, Pavia, Italy
[2] Univ Hosp Naples Federico II, Dept Adv Biomed Sci, Naples, Italy
[3] Univ Naples Federico II, Dept Elect Engn & Informat Technol, Naples, Italy
关键词
LONG-TERM MORTALITY; ISCHEMIC-STROKE; INPATIENT REHABILITATION; PROGNOSTIC SCORES; RISK; SURVIVAL; OUTCOMES; IMPACT; INDEX; SMOTE;
D O I
10.1038/s41598-020-77243-3
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Stroke is among the leading causes of death and disability worldwide. Approximately 20-25% of stroke survivors present severe disability, which is associated with increased mortality risk. Prognostication is inherent in the process of clinical decision-making. Machine learning (ML) methods have gained increasing popularity in the setting of biomedical research. The aim of this study was twofold: assessing the performance of ML tree-based algorithms for predicting three-year mortality model in 1207 stroke patients with severe disability who completed rehabilitation and comparing the performance of ML algorithms to that of a standard logistic regression. The logistic regression model achieved an area under the Receiver Operating Characteristics curve (AUC) of 0.745 and was well calibrated. At the optimal risk threshold, the model had an accuracy of 75.7%, a positive predictive value (PPV) of 33.9%, and a negative predictive value (NPV) of 91.0%. The ML algorithm outperformed the logistic regression model through the implementation of synthetic minority oversampling technique and the Random Forests, achieving an AUC of 0.928 and an accuracy of 86.3%. The PPV was 84.6% and the NPV 87.5%. This study introduced a step forward in the creation of standardisable tools for predicting health outcomes in individuals affected by stroke.
引用
收藏
页数:10
相关论文
共 70 条
[1]   Renal dysfunction as a predictor of acute stroke outcomes [J].
AboAlSamh, Danah K. ;
Abulaban, Ahmad A. ;
Khatri, Ismail A. ;
Al-Khathaami, Ali M. .
NEUROSCIENCES, 2017, 22 (04) :320-324
[2]   Improving risk prediction in heart failure using machine learning [J].
Adler, Eric D. ;
Voors, Adriaan A. ;
Klein, Liviu ;
Macheret, Fima ;
Braun, Oscar O. ;
Urey, Marcus A. ;
Zhu, Wenhong ;
Sama, Iziah ;
Tadel, Matevz ;
Campagnari, Claudio ;
Greenberg, Barry ;
Yagil, Avi .
EUROPEAN JOURNAL OF HEART FAILURE, 2020, 22 (01) :139-147
[3]   Cardiovascular Event Prediction by Machine Learning The Multi-Ethnic Study of Atherosclerosis [J].
Ambale-Venkatesh, Bharath ;
Yang, Xiaoying ;
Wu, Colin O. ;
Liu, Kiang ;
Hundley, W. Gregory ;
McClelland, Robyn ;
Gomes, Antoinette S. ;
Folsom, Aaron R. ;
Shea, Steven ;
Guallar, Eliseo ;
Bluemke, David A. ;
Lima, Joao A. C. .
CIRCULATION RESEARCH, 2017, 121 (09) :1092-+
[4]   Challenges to the Reproducibility of Machine Learning Models in Health Care [J].
Beam, Andrew L. ;
Manrai, Arjun K. ;
Ghassemi, Marzyeh .
JAMA-JOURNAL OF THE AMERICAN MEDICAL ASSOCIATION, 2020, 323 (04) :305-306
[5]  
Bhargava N., 2013, INT J ADV RES COMPUT, V3, P1114, DOI DOI 10.23956/IJARCSSE
[6]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32
[7]   Long-term survival and causes of death after stroke [J].
Bronnum-Hansen, H ;
Davidsen, M ;
Thorvaldsen, P .
STROKE, 2001, 32 (09) :2131-2136
[8]   A machine learning-based approach to directly compare the diagnostic accuracy of myocardial perfusion imaging by conventional and cadmium-zinc telluride SPECT [J].
Cantoni, Valeria ;
Green, Roberta ;
Ricciardi, Carlo ;
Assante, Roberta ;
Zampella, Emilia ;
Nappi, Carmela ;
Gaudieri, Valeria ;
Mannarino, Teresa ;
Genova, Andrea ;
De Simini, Giovanni ;
Giordano, Alessia ;
D'Antonio, Adriana ;
Acampa, Wanda ;
Petretta, Mario ;
Cuocolo, Alberto .
JOURNAL OF NUCLEAR CARDIOLOGY, 2022, 29 (01) :46-55
[9]  
Centers for Medicare & Medicaid Services, 2001, FED REGISTER, V66, P41316
[10]  
Centers for Medicare & Medicaid Services (CMS), 2015, FED REGISTER, V70, P47879