Application of Machine Learning Algorithms For Predicting Surgical Outcomes in Neonates
Keywords:
Machine learning, predictive analytics, neonatal surgery, surgical outcomes, decision support systems.Abstract
This study investigates the application of machine learning algorithms to predict surgical outcomes in neonates. By analysing clinical and demographic data from neonatal surgical cases, we developed predictive models using various machine learning techniques. The goal is to assist surgeons in making more informed decisions and improving patient care. The results demonstrate that machine learning models can significantly enhance the accuracy of predicting surgical outcomes, offering valuable insights into optimizing neonatal surgical practices. Despite some limitations, this research highlights the potential of machine learning in advancing neonatal surgery.
Downloads
Metrics
References
Shah R, Gupta N, Patel M. Machine learning models for predicting neonatal outcomes in NICUs. Journal of Pediatrics. 2020;178(4):45-52.
Johnson KL, Carter JP, Evans RT. Deep learning in predicting post-surgical complications in pediatric patients. Pediatric Surgery International. 2021;37(3):257-266.
Kumar S, Thomas M, Sharma V. Risk stratification using machine learning for neonatal surgery outcomes. BMC Medical Informatics and Decision Making. 2019;19(85):1-10.
Taylor BR, Johnson AP, Ahmed Z. Real-time surgical decision support using continuous learning algorithms. Artificial Intelligence in Medicine. 2020;104:101811.
Patel A, Desai N, Mehta P. Comparative analysis of machine learning algorithms for neonatal outcome prediction. Journal of Clinical Analytics. 2022;58(7):345-356.
Lee CH, Park JW, Kim HY. Bias detection and mitigation in predictive models for neonatal outcome prediction. Health Informatics Journal. 2021;27(2):203-217.
Annapurna K, Deepthi K, Ramanjaneyulu BS. Comparision of Soft Fusion Techniques for Cooperative Spectrum Sensing in Cognitive Radio Networks. International Journal of communication and computer Technologies. 2021;9(1):1-5.
Verma A, Chandra R. Fluid Mechanics for Mechanical Engineers: Fundamentals and Applications. Association Journal of Interdisciplinary Technics in Engineering Mechanics. 2024 Sep 30;2(3):1-5.
Teker MS. Antibacterial Activity of Cotton, Wool and Silk Fabrics Dyed with Daphne sericea Vahl Collected from Antalya. Natural and Engineering Sciences. 2020 Nov 17;5(1):30-6. https://doi.org/10.28978/nesciences.691689
Makhlough A, Nasrollahzadeh Saravi H, Naderi MJ, Eslami F, Ahmadnezhad A. Use of algal indices for determining of water quality in the Sirvan River tributaries (Kurdistan-Iran). International Journal of Aquatic Research and Environmental Studies. 2023 May 10;3(1):79-92. https://doi.org/10.70102/IJARES/V3I1/5
Joshi P, Singh K. Strength of Materials: Analysis and Design of Mechanical Components. Association Journal of Interdisciplinary Technics in Engineering Mechanics. 2024 Dec 26;2(4):1-5.
Aydın M, Biltekin D. First morphometric aspects and growth parameters of the European flat oyster (Ostrea edulis Linnaeus, 1758) for the Black Sea, Turkey. Natural and Engineering Sciences. 2020;5(2):101-9. https://doi.org/10.28978/nesciences.756736
Baldeón CPH, Fuster-Guillén D, Figueroa RPN, Lirio RAP, Hernández RM. Pedagogy in strengthening visual perception: a review of the literature. Indian Journal of Information Sources and Services. 2024;14(2):85-96. https://doi.org/10.51983/ijiss-2024.14.2.13
Jairam CH, et al. Analysing retinal disease using Cleha and thresholding. International Journal of Communication and Computer Technologies. 2022;10(1):18-20.
Thomas KP, Rajini G. Evolution of sustainable finance and its opportunities: a bibliometric analysis. Indian Journal of Information Sources and Services. 2024;14(2):126-132. https://doi.org/10.51983/ijiss-2024.14.2.18
Kumar A, Yadav P. Experimental investigation on analysis of alkaline treated natural fibers reinforced hybrid composites. Association Journal of Interdisciplinary Technics in Engineering Mechanics. 2024;2(4):25-31.
Akbora HD. General status and growth potential of fisheries sector in Northern Cyprus. Natural and Engineering Sciences. 2020;5(2):73-81. https://doi.org/10.28978/nesciences.756745
Foroutan B, Bashi Amlashi HR, Partani A, De los Ríos P, Nasrollahzadeh Saravi H. Determination and comparisons of heavy metals (cobalt and iron) accumulation in muscle, liver, and gill tissues of Golden Mullet (Chelon aurata) in coastal areas of the Caspian Sea (Mazandaran and Golestan provinces of Iran). International Journal of Aquatic Research and Environmental Studies. 2023;3(1):1-15. https://doi.org/10.70102/IJARES/V3I1/1
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution 4.0 International License.
You are free to:
- Share — copy and redistribute the material in any medium or format
- Adapt — remix, transform, and build upon the material for any purpose, even commercially.
Terms:
- Attribution — You must give appropriate credit, provide a link to the license, and indicate if changes were made. You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use.
- No additional restrictions — You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.