1st Edition

Computational Intelligence in Medical Decision Making and Diagnosis Techniques and Applications

    286 Pages 100 B/W Illustrations
    by CRC Press

    Computation intelligence (CI) paradigms, including artificial neural networks, fuzzy systems, evolutionary computing techniques, and intelligent agents, form the basis of making clinical decisions. This book explains different aspects of the current research on CI technologies applied in the field of medical diagnosis. It discusses critical issues related to medical diagnosis, like uncertainties in the medical domain, problems in the medical data, especially dealing with time-stamped data, and knowledge acquisition.

    Features:

    • Introduces recent applications of new computational intelligence technologies focusing on medical diagnosis issues.
    • Reviews multidisciplinary research in health care, like data mining, medical imaging, pattern recognition, and so forth.
    • Explores intelligent systems and applications of learning in health-care challenges, along with the representation and reasoning of clinical uncertainty.
    • Addresses problems resulting from automated data collection in modern hospitals, with possible solutions to support medical decision-making systems.
    • Discusses current and emerging intelligent systems with respect to evolutionary computation and its applications in the medical domain.

    This book is aimed at researchers, professionals, and graduate students in computational intelligence, signal processing, imaging, artificial intelligence, and data analytics.

    1 Prediction of Diseases Using Machine Learning Techniques

    Abinash Tripathy, Panchanand Jha, Ch. Chakradhara Rao, P. Susan Lalitha Grace, P. Sharon Priya Harika, and Ch. Madhu

    2 A Novel Virtual Medicinal Care Model for Remote Treatments

    Drishti Hans, Shashi Gandhar, Gaurav Narula, Abhishek Gandhar, and Umang Hans

    3 Artificial Intelligence in Future Telepsychiatry and Psychotherapy for E-Mental Health Revolution

    Sudhir Hebbar and Vandana B

    4 Optimized Convolutional Neural Network for Classification of Tumors from MR Brain Images

    K. Ramalakshmi, R. Meena Prakash, S. Thayammal, R. Shantha Selva Kumari, and Henry Selvaraj

    5 Predictive Modeling of Epidemic Diseases Based on Vector-Borne Diseases Using Artificial Intelligence Techniques

    Inderpreet Kaur, Yogesh Kumar, Amanpreet Kaur Sandhu, and Muhammad Fazal Ijaz

    6 Hybrid Neural Network-Based Fuzzy Inference System Combined with Machine Learning to Detect and Segment Kidney Tumor

    P Srinivasa Rao, Pradeep Kumar Bheemavarapu, D Swapna, Subba Rao Polamuri, and M. Madhusudhana Subramanyam

    7 Classification of Breast Tumor from Histopathological Images with Transfer Learning

    R. Meena Prakash, K. Ramalakshmi, S. Thayammal, R. Shantha Selva Kumari, and Henry Selvaraj

    8 Performance of IoT-Enabled Devices in Remote Health Monitoring Applications

    D. Narendar Singh, Pavitra B, Ashish Singh, and Jayasimha Reddy A

    9 Applying Machine Learning Logistic Regression Model for Predicting Diabetes in Women

    Nitin Jaglal Untwal and Utku Kose

    10 Compressive Sensing-Based Medical Imaging Techniques to Detect the Type of Pneumonia in Lungs

    Vivek Upadhyaya, Girraj Sharma, Tien Anh Tran, and Mohammad Salim

    11 Electroencephalogram (EEG) Signal Denoising Using Optimized Wavelet Transform (WT): A Study

    Chaudhuri Manoj Kumar Swain, Ashish Singh, and Indrakanti Raghu

    12 Predicting Diabetes in Women by Applying the Support Vector Machine (SVM) Model

    Nitin Jaglal Untwal and Utku Kose

    13 Data Mining Approaches on EHR System: A Survey

    Thilagavathy R, Veeramani T, Deebalakshmi R, and Sundaravadivazhagan B

    14 Chest Tumor Identification in Mammograms by Selected Features Employing SVM

    Shivaprasad More, Pallavi Gholap, Rongxing Lu, and Sitendra Tamrakar

    15 A Novel Optimum Clustering Method Using Variant of NOA

    Ravi Kumar Saidala, Nagaraju Devarakonda, Thirumala Rao B, Jabez Syam, and Sujith Kumar

    16 Role of Artificial Intelligence and Neural Network in the Health-Care Sector: An Important Guide for Health Prominence

    Ankur Narendra Bhai Shah, Nimisha Patel, Jay A. Dave, and Rajanikanth Aluvalu

    Biography

    Dr. Sitendra Tamrakar is working as an associate professor and research coordinator in the Department of Computer Science and Engineering at Nalla Malla Reddy Engineering College, Hyderabad, Telangana, India. He has more than 17 years of experience in the field of teaching and research. He has guided 5 PhD and 19 MTech dissertations. He has authored a total of 92 publications which include books, research papers, and book chapters which have been published nationally and internationally. He has 5 patents published and granted with IP Australia and IP India. He had delivered 15 invited talks in various national and international conferences and seminars. He has been appointed as reviewer in various journals and conferences. He has attended 35 FDP/workshops and organized 7 conferences, FDPs, and workshops. His research interests are focused on the area of artificial intelligence, cloud computing, and computer networks. He is an active member of the Computer Society of India (CSI), Hyderabad Chapter, and ACM CSTA.

    Dr. Shruti Bhargava Choubey has received her BE with honors (2007) from RGPV Bhopal and her MTech degree in Digital Communication Engineering (2010) from RGPV Bhopal; subsequently, she carried out her research from Dr. K. N. Modi University Banasthali Rajasthan and was awarded PhD in 2015. Presently, she is working as an associate professor and dean of innovation and research in the Department of Electronics and Communication at Sreenidhi Institute of Science and Technology, Hyderabad. She has published more than 100 papers (5 SCI, 18 Scopus) of national and international repute. She has been a member of many selection committees for recruitment of staff and faculty. Her research areas include signal processing, image processing, and biomedical engineering. She has produced 17 MTech degrees and guided more than 70 BTech projects. She is a senior member of IEEE and a member of IETE, New Delhi, and International Association of Engineers (IAENG). She worked in different positions, like dean of academics and HOD, with numerous capacities. She was awarded MP Young Scientist fellowship in 2015 and received MP Council fellowship in 2014 for her contribution to research.

    Dr. Abhishek Choubey has received his PhD degree in the field of VLSI for digital signal processing from Jayppe University of Engineering and Technology, Guna MP, in 2017. He is currently associated with Sreenidhi Institute of Science and Technology, Hyderabad, as an associate professor. He has published nearly 70 technical articles. His research interest includes reconfigurable architectures, approximate computating, algorithm design, and implementation of high-performance VLSI systems for signal processing applications. He was a recipient of the Sydney R. Parker and M. N. S. Swamy Best Paper Award for Circuits, Systems, and Signal Processing in 2018.