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Chapter 1 Digital transformation technology and tools: shaping the future of primary health care
1
Zitationen
4
Autoren
2023
Jahr
Abstract
Artificial Intelligence enablement is often incorporated to facilitate and smoothen business operations that require large-scale human activities in an effortless manner that relatively interacts with human intelligence. Artificial intelligence augmentation in business functions implies quality enhancement, process streamlining, ensuring security and privacy, detection of defects, bugs and errors that extend to design a strong system approach for enabling the completion of tasks more efficiently, enhances workforce productivity, improves customer engagement and experience, drives to lower operating cost and thus impact the organization's role. The organizations which incorporate and focus strongly on Artificial Intelligence enablement practices are found to be successful in attracting huge investments and talented human resource, in achieving corporate missions, in satisfying the clients, attaining competitive advantage over the others, and importantly, helping the organization in maximizing its profits. It is found that organizations incorporating Machine Learning and Artificial Intelligence have gained better financial returns from their Artificial Intelligence investments through the study of artificial intelligence in the enterprises. This work automatically detects the abnormalities from medical images in the computer-aided diagnosis context. Multimodal Medical image analysis is a challenging problem. Medical images are different in texture and shape. The current research work is an attempt to deal with problems in Multimodal Medical image analysis and provide the solution for Medical image analysis. Image Acquisition procedures refer to any or all Medical image capturing systems. Medical images differ from pictures procured from visualizations in that the delineated physical parameters in restorative pictures are generally distant for investigation. There are different strategies for making medical images accessible in the restorative business sector like r-ray, fluoroscopy and angiography, DSA, X-ray computed tomography (CT), CT angiography, magnetic resonance imaging (MRI), MR angiography, functional MRI, perfusion MRI, diffusion MRI, SPECT, PET, and so on discussed in this work.
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