Deep Learning and Convolutional Neural Networks for Medical Imaging and Clinical Informatics (inbunden)
Format
Inbunden (Hardback)
Språk
Engelska
Antal sidor
461
Utgivningsdatum
2019-10-01
Upplaga
1st ed. 2019
Förlag
Springer Nature Switzerland AG
Medarbetare
Lu, Le (ed.), Wang, Xiaosong (ed.), Carneiro, Gustavo (ed.), Yang, Lin (ed.)
Illustratör/Fotograf
Bibliographie 150 schwarz-weiße Abbildungen
Illustrationer
156 Illustrations, color; 21 Illustrations, black and white; XI, 461 p. 177 illus., 156 illus. in co
Dimensioner
234 x 156 x 27 mm
Vikt
840 g
Antal komponenter
1
Komponenter
1 Hardback
ISBN
9783030139681
Deep Learning and Convolutional Neural Networks for Medical Imaging and Clinical Informatics (inbunden)

Deep Learning and Convolutional Neural Networks for Medical Imaging and Clinical Informatics

Disease Detection, Organ Segmentation, and Database Construction and Mining

Inbunden Engelska, 2019-10-01
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This book reviews the state of the art in deep learning approaches to high-performance robust disease detection, robust and accurate organ segmentation in medical image computing (radiological and pathological imaging modalities), and the construction and mining of large-scale radiology databases. It particularly focuses on the application of convolutional neural networks, and on recurrent neural networks like LSTM, using numerous practical examples to complement the theory. The book's chief features are as follows: It highlights how deep neural networks can be used to address new questions and protocols, and to tackle current challenges in medical image computing; presents a comprehensive review of the latest research and literature; and describes a range of different methods that employ deep learning for object or landmark detection tasks in 2D and 3D medical imaging. In addition, the book examines a broad selection of techniques for semantic segmentation using deep learning principles in medical imaging; introduces a novel approach to text and image deep embedding for a large-scale chest x-ray image database; and discusses how deep learning relational graphs can be used to organize a sizable collection of radiology findings from real clinical practice, allowing semantic similarity-based retrieval.The intended reader of this edited book is a professional engineer, scientist or a graduate student who is able to comprehend general concepts of image processing, computer vision and medical image analysis. They can apply computer science and mathematical principles into problem solving practices. It may be necessary to have a certain level of familiarity with a number of more advanced subjects: image formation and enhancement, image understanding, visual recognition in medical applications, statistical learning, deep neural networks, structured prediction and image segmentation.
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Övrig information

Dr. Le Lu is the Director of Ping An Technology US Research Labs, and an adjunct faculty member at Johns Hopkins University, USA. Dr. Xiaosong Wang is a Senior Applied Research Scientist at Nvidia Corp., USA. Dr. Gustavo Carneiro is an Associate Professor at the University of Adelaide, Australia. Dr. Lin Yang is an Associate Professor at the University of Florida, USA.

Innehållsförteckning

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