Predictive and diagnosis models of stroke from hemodynamic signal monitoring (original) (raw)
References
Stevens E, McKevitt C, Emmett E, Wolfe C, Wang Y (2017) El impacto del ictus en Europa. King’s College London, London Google Scholar
Oh SL, Hagiwara Y, Raghavendra U, Yuvaraj R, Arunkumar N, Murugappan M, Acharya UR (2018) A deep learning approach for Parkinson’s disease diagnosis from EEG signals. Neural Comput Applic, pp 1–7
Groselj C, Kukar M, Fettich J, Kononenko I (1997) Machine learning improves the accuracy of coronary artery disease diagnostic methods. In: Computers in cardiology 1997. IEEE, pp 57–60
Khosla A, Cao Y, Lin CC-Y, Chiu HK, Hu J, Lee H (2010) An integrated machine learning approach to stroke prediction. In: Proceedings of the 16th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. ACM, pp 183–192
Letham B, Rudin C, McCormick TH, Madigan D (2013) An interpretable stroke prediction model using rules and Bayesian analysis. In: Workshops at the Twenty-Seventh AAAI Conference on Artificial Intelligence
Zhang H, Zhang L-Q (2005) ECG analysis based on PCA and support vector machines. In: 2005 International Conference on Neural Networks and Brain, vol 2. IEEE, pp 743–747
Ozcan NO, Gurgen F (2010) Fuzzy support vector machines for ECG arrhythmia detection. In: 2010 20th International Conference on Pattern Recognition. IEEE, pp 2973–2976
Garg R, Oh E, Naidech A, Kording K, Prabhakaran S (2019) Automating ischemic stroke subtype classification using machine learning and natural language processing. J Stroke Cerebrovasc Dis 28 (7):2045–2051 Article Google Scholar
Aviv R, Shelef I, Malam S, Chakraborty S, Sahlas D, Tomlinson G, Symons S, Fox A (2007) Early stroke detection and extent: impact of experience and the role of computed tomography angiography source images. Clin Radiol 62(5):447–452 ArticleCAS Google Scholar
Lee E-J, Kim Y-H, Kim N, Kang D-W (2017) Deep into the brain: artificial intelligence in stroke imaging. J Stroke 19(3):277 Article Google Scholar
Bentley P, Ganesalingam J, Jones ALC, Mahady K, Epton S, Rinne P, Sharma P, Halse O, Mehta A, Rueckert D (2014) Prediction of stroke thrombolysis outcome using CT brain machine learning. NeuroImage: Clin 4:635–640 Article Google Scholar
Cheon S, Kim J, Lim J (2019) The use of deep learning to predict stroke patient mortality. Int J Environ Res Public Health 16(11):1876 Article Google Scholar
Asadi H, Dowling R, Yan B, Mitchell P (2014) Machine learning for outcome prediction of acute ischemic stroke post intra-arterial therapy. PloS one 9(2):e88225 Article Google Scholar
Zhang Q, Xie Y, Ye P, Pang C (2013) Acute ischemic stroke prediction from physiological time series patterns. Austral Med J 6(5):280–286 Article Google Scholar
Vrtková A, Procházka V (2019) Comparing the performance of regression models, random forests and neural networks for stroke patients’ outcome prediction. In: 2019 International Conference on Information and Digital Technologies (IDT). IEEE, pp 543–550
Shokoohi-Yekta M, Hu B, Jin H, Wang J, Keogh E (2017) Generalizing DWT to the multi-dimensional case requires an adaptive approach. Data Mining Knowl Discov 31(1):1–31 Article Google Scholar
García-Terriza L, Risco-Martín JL, Ayala JL, Roselló GR, Camarasaltas JM (2019) Comparison of different machine learning approaches to model stroke subtype classification and risk prediction. In: Proceedings of the Modeling and Simulation in Medicine Symposium, Society for Computer Simulation International, p 6
Zitzler E (1999) Evolutionary algorithms for multiobjective optimization: methods and applications. Ph.D. thesis, Swiss Federal Institute of Technology (ETH)
Hatib F, Jian Z, Buddi S, Lee C, Settels J, Sibert K, Rinehart J, Cannesson M (2018) Machine-learning algorithm to predict hypotension based on high-fidelity arterial pressure waveform analysis. Anesthesiol J Amer Soc Anesthesiol 129(4):663– 674 Google Scholar
Kendale S, Kulkarni P, Rosenberg AD, Wang J (2018) Supervised machine-learning predictive analytics for prediction of postinduction hypotension. Anesthesiol J Amer Soc Anesthesiol 129(4):675–688 Google Scholar
Convertino VA, Moulton SL, Grudic GZ, Rickards CA, Hinojosa-Laborde C, Gerhardt RT, Blackbourne LH, Ryan KL (2011) Use of advanced machine-learning techniques for noninvasive monitoring of hemorrhage. J Trauma Acute Care Surg 71(1):S25–S32 Article Google Scholar
Shoemaker WC, Wo CC, Lu K, Chien L-C, Bayard DS, Belzberg H, Demetriades D, Jelliffe RW (2006) Outcome prediction by a mathematical model based on noninvasive hemodynamic monitoring. J Trauma Acute Care Surg 60(1):82–90 Article Google Scholar
Prasad V, Guerrisi M, Dauri M, Coniglione F, Tisone G, De Carolis E, Cillis A, Canichella A, Toschi N, Heldt T (2017) Prediction of postoperative outcomes using intraoperative hemodynamic monitoring data. Scient Rep 7(1):1–11 Google Scholar
Lee H, Lee E-J, Ham S, Lee H-B, Lee JS, Kwon S, Kim J, Kim N, Kang D-W Machine learning approach to identify stroke within 4.5 hours, Stroke 51. https://doi.org/10.1161/STROKEAHA.119.027611