Welcome to Scholar Publishing Group

Machine Learning Theory and Practice, 2020, 1(1); doi: 10.38007/ML.2020.010106.

Machine Learning in the Recognition and Prognosis Prediction of Children's Post-traumatic Stress Disorder

Author(s)

Yan Wang

Corresponding Author:
Yan Wang
Affiliation(s)

Philippine Christian University, Philippine

Abstract

With the development of society, diseases have also become a topic of concern, and children's post-traumatic stress disorder has attracted more attention. This paper mainly analyzes the current situation of research on nerve protection and human brain injury at home and abroad, and designs a protection system based on machine learning model in combination with the algorithm used in this topic. First, it introduces some related concepts and theoretical foundations of this model, and studies its application in the recognition of children's post-traumatic stress disorder and prognosis prediction. Secondly, the characteristics and advantages of recognition of children's post-traumatic stress defects, problems in use; evaluation difficulties and other aspects are obtained through experimental analysis. Finally, a sample test based on training classification diagram is proposed to solve these problems with Bayesian algorithm, and the results are compared to verify its accuracy. The verification results show that the recognition rate of children's post-traumatic stress disorder in this model is very high. The prediction time and recognition time of stress disorder are very fast, which meets the recognition needs of users.

Keywords

Machine Learning, Child Trauma, Stress Disorder, Outcome Prediction

Cite This Paper

Yan Wang. Machine Learning in the Recognition and Prognosis Prediction of Children's Post-traumatic Stress Disorder. Machine Learning Theory and Practice (2020), Vol. 1, Issue 1: 49-56. https://doi.org/10.38007/ML.2020.010106.

References

[1] Nikhilanand Arya, Sriparna Saha:Multi-Modal Classification for Human Breast Cancer Prognosis Prediction: Proposal of Deep-Learning Based Stacked Ensemble Model. IEEE ACM Trans. Comput. Biol. Bioinform. 19(2): 1032-1041 (2020).

[2] Toufik Aggab, Manuel Avila, Pascal Vrignat, Frédéric Kratz:Unifying Model-Based Prognosis With Learning-Based Time-Series Prediction Methods: Application to Li-Ion Battery. IEEE Syst. J. 15(4): 5245-5254 (2020). 

[3] Luca Parisi, Narrendar RaviChandran, Marianne Lyne Manaog:A novel hybrid algorithm for aiding prediction of prognosis in patients with hepatitis. Neural Comput. Appl. 32(8): 3839-3852 (2020). https://doi.org/10.1007/s00521-019-04050-x

[4] Jie Hao, Youngsoon Kim, Tae-Kyung Kim, Mingon Kang:PASNet: pathway-associated sparse deep neural network for prognosis prediction from high-throughput data. BMC Bioinform. 19(1): 510:1-510:13 (2018). https://doi.org/10.1186/s12859-018-2500-z

[5] Najmeh Daroogheh, Nader Meskin, Khashayar Khorasani:An improved particle filtering-based approach for health prediction and prognosis of nonlinear systems. J. Frankl. Inst. 355(8): 3753-3794 (2018). https://doi.org/10.1016/j.jfranklin.2018.02.023

[6] Cameron Cooper:Using Machine Learning to Identify At-risk Students in an Introductory Programming Course at a Two-year Public College. Adv. Artif. Intell. Mach. Learn. 2(3): 407-421 (2020). 

[7] Elisabete A. De Nadai Fernandes, Gabriel A. Sarriés, Yuniel T. Mazola, Robson C. de Lima, Gustavo N. Furlan, Márcio A. Bacchi:Machine learning to support geographical origin traceability of Coffea Arabica. Adv. Artif. Intell. Mach. Learn. 2(1): 273-287 (2020). 

[8] Dmitry V. Vinogradov:Algebraic Machine Learning: Emphasis on Efficiency. Autom. Remote. Control. 83(6): 831-846 (2020). https://doi.org/10.1134/S0005117922060029

[9] Milos Kotlar, Marija Punt, Veljko Milutinovic:Chapter Four - Energy efficient implementation of tensor operations using dataflow paradigm for machine learning. Adv. Comput. 126: 151-199 (2020). 

[10] Veeramuthu Venkatesh, Pethuru Raj, R. Anushiadevi:Chapter Ten - A smart framework through the Internet of Things and machine learning for precision agriculture. Adv. Comput. 127: 279-306 (2020). 

[11] Bdallah M. H. Abbas, Khairil Imran Bin Ghauth, Choo-Yee Ting:User Experience Design Using Machine Learning: A Systematic Review. IEEE Access 10: 51501-51514 (2020). 

[12] Mohamed Saleh Abouelyazid, Sherif Hammouda, Yehea Ismail:Fast and Accurate Machine Learning Compact Models for Interconnect Parasitic Capacitances Considering Systematic Process Variations. IEEE Access 10: 7533-7553 (2020). 

[13] Murad A. Abusubaih, Sundous Khamayseh:Performance of Machine Learning-Based Techniques for Spectrum Sensing in Mobile Cognitive Radio Networks. IEEE Access 10: 1410-1418 (2020). 

[14] Muhammad Adel, Sabah M. Ahmed, Mohamed Fanni:End-Effector Position Estimation and Control of a Flexible Interconnected Industrial Manipulator Using Machine Learning. IEEE Access 10: 30465-30483 (2020). 

[15] Ghulab Nabi Ahmad, Hira Fatima, Shafi Ullah, Abdelaziz Salah Saidi, Asghar Imdadullah:Efficient Medical Diagnosis of Human Heart Diseases Using Machine Learning Techniques With and Without GridSearchCV. IEEE Access 10: 80151-80173 (2020). 

[16] Nur Ahmadi, Trio Adiono, Ayu Purwarianti, Timothy G. Constandinou, Christos-Savvas Bouganis:Improved Spike-Based Brain-Machine Interface Using Bayesian Adaptive Kernel Smoother and Deep Learning. IEEE Access 10: 29341-29356 (2020). 

[17] Dina Bousdar Ahmed, Estefania Munoz Diaz:Survey of Machine Learning Methods Applied to Urban Mobility. IEEE Access 10: 30349-30366 (2020). 

[18] Chandni Akbar, Yiming Li, Narasimhulu Thoti:Device-Simulation-Based Machine Learning Technique for the Characteristic of Line Tunnel Field-Effect Transistors. IEEE Access 10: 53098-53107 (2020).