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Deep Learning for Healthcare Decision Making

Specificaties
Gebonden, 272 blz. | Engels
River Publishers | 1e druk, 2023
ISBN13: 9788770223898
Rubricering
River Publishers 1e druk, 2023 9788770223898
€ 141,77
Levertijd ongeveer 10 werkdagen

Samenvatting

Health care today is known to suffer from siloed and fragmented data, delayed clinical communications, and disparate workflow tools due to the lack of interoperability caused by vendor-locked health care systems, lack of trust among data holders, and security/privacy concerns regarding data sharing. The health information industry is ready for big leaps and bounds in terms of growth and advancement.

This book is an attempt to unveil the hidden potential of the enormous amount of health information and technology. Throughout this book, we attempt to combine numerous compelling views, guidelines, and frameworks to enable personalized health care service options through the successful application of deep learning frameworks. The progress of the health-care sector will be incremental as it learns from associations between data over time through the application of suitable AI, deep net frameworks, and patterns. The major challenge health care is facing is the effective and accurate learning of unstructured clinical data through the application of precise algorithms. Incorrect input data leading to erroneous outputs with false positives is intolerable in healthcare as patients’ lives are at stake. This book is written with the intent to uncover the stakes and possibilities involved in realizing personalized health-care services through efficient and effective deep learning algorithms.

The specific focus of this book will be on the application of deep learning in any area of health care, including clinical trials, telemedicine, health records management, etc.

Specificaties

ISBN13:9788770223898
Taal:Engels
Bindwijze:Gebonden
Aantal pagina's:272
Druk:1
€ 141,77
Levertijd ongeveer 10 werkdagen

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        Deep Learning for Healthcare Decision Making