Automated Multimodal Medical Diagnostics Using Deep Learning Frameworks

Rajendra P. Pandey, A Rengarajan,Aishwary Awasthi

2024 International Conference on Optimization Computing and Wireless Communication (ICOCWC)(2024)

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摘要
deep learning Frameworks are being increasingly used for computerized multimodal clinical diagnostics. Mainly they help automate the procedure of inferring the prognosis from an expansion of found organic alerts. For instance, deep studying can infer the analysis from electrocardiograms (ECGs) and echocardiograms (ECGs). Deep getting-to-know algorithms can examine large amounts of statistics to become aware of styles and classify the diagnosis. Moreover, deep mastering may be used to automate the translation of clinical pictures. For example, it may be used to classify tumors on mammograms and distinguish between malignant and benign tumors. Moreover, deep studying may analyze genomic records to identify genetic markers associated with certain sicknesses. In sum, deep mastering frameworks have become increasingly crucial for automatic multimodal medical diagnostics, as they can lessen the cost and time of analysis and improve the accuracy of diagnosis.
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关键词
Frameworks,increasingly,electrocardiograms,algorithm,translation
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