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Application of Artificial Intelligence in Early Detection of Lung Cancer
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Application of Artificial Intelligence in Early Detection of Lung Cancer

Book Details

Format Paperback / Softback
ISBN-10 0323952453
ISBN-13 9780323952453
Publisher Elsevier Science & Technology
Imprint Academic Press Inc
Country of Manufacture GB
Country of Publication GB
Publication Date May 10th, 2024
Print length 254 Pages
Weight 528 grams
Dimensions 23.60 x 19.00 x 1.60 cms
Ksh 22,850.00
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Application of Artificial Intelligence in Early Detection of Lung Cancer presents the most up-to-date computer-aided diagnosis techniques used to effectively predict and diagnose lung cancer. The presence of pulmonary nodules on lung parenchyma is often considered an early sign of lung cancer, thus using machine and deep learning technologies to identify them is key to improve patients’ outcome and decrease the lethal rate of such disease. The book discusses topics such as basics of lung cancer imaging, pattern recognition techniques, deep learning, and nodule detection and localization. In addition, the book discusses risk prediction based on radiological analysis and 3D modeling. This is a valuable resource for cancer researchers, oncologists, graduate students, radiologists, and members of biomedical field who are interested in the potential of AI technologies in the diagnosis of lung cancer.

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