OPTIMIZING HEALTHCARE RESOURCE ALLOCATION USING RESIDUAL CONVOLUTIONAL NEURAL NETWORKS
Aim/Purpose To optimize healthcare resource allocation using residual convolutional neural networks. Background In the early stages, several traditional methods were adopted and implemented; however, the rise of AI and its technologies increased development in the healthcare sector and made it reach...
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Published in | Informing science Vol. 28; p. 1 |
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Main Authors | , , , , , |
Format | Journal Article |
Language | English |
Published |
Informing Science Institute
01.01.2025
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Subjects | |
Online Access | Get full text |
ISSN | 1547-9684 |
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Summary: | Aim/Purpose To optimize healthcare resource allocation using residual convolutional neural networks. Background In the early stages, several traditional methods were adopted and implemented; however, the rise of AI and its technologies increased development in the healthcare sector and made it reach a better height in Industry 4.0. The main problem of this research is focusing on the inefficient allocation of healthcare resources, which leads to less outcome and accuracy. This research's main novelty and objective is to implement a predictive model that may allocate resources based on several factors. Methodology In the proposed method, Residual CNNs, a deep learning architecture well-known for its efficacy in image classification applications, we assess healthcare data and estimate ideal resource distribution. Residual CNNs are well-trained in the dataset on several factors and characteristics. The model produces predictions of resource allocation that maximize healthcare outcomes using comprehension of complex relationships and patterns in the data. Contribution The novel feature of this work is the integration of the state-of-the-art deep learning architecture Residual CNNs into the domain of healthcare resource allocation. The proposed method, Residual CNNs, is well-trained in the dataset on several factors and characteristics. The model produces predictions of resource allocation that maximize healthcare outcomes by comprehending complex relationships and patterns in the data. Findings We show experimentally that the proposed approach effectively allocates healthcare resources. The residual CNN model outperforms traditional methods in accurately predicting resource allocation needs across different regions and demographic groups. We find significant increases in resource allocation efficiency by applying deep learning techniques, which enhance healthcare outcomes and reduce treatment disparities. Recommendations for Researchers Investigations should prioritize the validation of the algorithm in various healthcare environments to assess its efficacy in clinical application. Future Research This work can be enhanced in future research using several deep-learning algorithms to achieve better accuracy and performance. Keywords healthcare, resource allocation, deep learning, convolutional neural networks, optimization |
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ISSN: | 1547-9684 |