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Application of Machine Learning in Intelligent Medical Image Diagnosis and Construction of Intelligent Service Process

The introduction of digital technology in the healthcare industry is marked by ongoing difficulties with implementation and use. Slow progress has been made in unifying different healthcare systems, and much of the globe still lacks a fully integrated healthcare system. As a result, it is critical a...

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Published in:Computational intelligence and neuroscience 2022, Vol.2022, p.9152605-14
Main Authors: Gao, Zhihong, Lou, Lihua, Wang, Meihao, Sun, Zhen, Chen, Xiaodong, Zhang, Xiang, Pan, Zhifang, Hao, Haibin, Zhang, Yu, Quan, Shichao, Yin, Shaobo, Lin, Cai, Shen, Xian
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creator Gao, Zhihong
Lou, Lihua
Wang, Meihao
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description The introduction of digital technology in the healthcare industry is marked by ongoing difficulties with implementation and use. Slow progress has been made in unifying different healthcare systems, and much of the globe still lacks a fully integrated healthcare system. As a result, it is critical and advantageous for healthcare providers to comprehend the fundamental ideas of AI in order to design and deliver their own AI-powered technology. AI is commonly defined as the capacity of machines to mimic human cognitive functions. It can tackle jobs with equivalent or superior performance to humans by combining computer science, algorithms, machine learning, and data science. The healthcare system is a dynamic and evolving environment, and medical experts are constantly confronted with new issues, shifting duties, and frequent interruptions. Because of this variation, illness diagnosis frequently becomes a secondary concern for healthcare professionals. Furthermore, clinical interpretation of medical information is a cognitively demanding endeavor. This applies not just to seasoned experts, but also to individuals with varying or limited skills, such as young assistant doctors. In this paper, we proposed the comparative analysis of various state-of-the-art methods of deep learning for medical imaging diagnosis and evaluated various important characteristics. The methodology is to evaluate various important factors such as interpretability, visualization, semantic data, and quantification of logical relationships in medical data. Furthermore, the glaucoma diagnosis system is discussed in detail via qualitative and quantitative approaches. Finally, the applications and future prospects were also discussed.
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Slow progress has been made in unifying different healthcare systems, and much of the globe still lacks a fully integrated healthcare system. As a result, it is critical and advantageous for healthcare providers to comprehend the fundamental ideas of AI in order to design and deliver their own AI-powered technology. AI is commonly defined as the capacity of machines to mimic human cognitive functions. It can tackle jobs with equivalent or superior performance to humans by combining computer science, algorithms, machine learning, and data science. The healthcare system is a dynamic and evolving environment, and medical experts are constantly confronted with new issues, shifting duties, and frequent interruptions. Because of this variation, illness diagnosis frequently becomes a secondary concern for healthcare professionals. Furthermore, clinical interpretation of medical information is a cognitively demanding endeavor. 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subjects Algorithms
Alzheimer's disease
Artificial intelligence
Brain research
Clinical medicine
Cognitive ability
Comparative analysis
Computer science
Data science
Deep learning
Diabetic retinopathy
Diagnosis
Digital imaging
Glaucoma
Health care
Health care industry
Information processing
Learning algorithms
Machine learning
Medical diagnosis
Medical electronics
Medical imaging
Medical imaging equipment
Medical personnel
Neural networks
Pathology
Qualitative analysis
Research methodology
Review
Statistical analysis
Tomography
title Application of Machine Learning in Intelligent Medical Image Diagnosis and Construction of Intelligent Service Process
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