Reprint

Medical Data Processing and Analysis

Edited by
July 2023
254 pages
  • ISBN978-3-0365-8068-5 (Hardback)
  • ISBN978-3-0365-8069-2 (PDF)

This book is a reprint of the Special Issue Medical Data Processing and Analysis that was published in

Medicine & Pharmacology
Public Health & Healthcare
Summary

Medical data can be defined as obtaining information from patients (such as signals, images, sounds, chemical components and their concentration, body temperature, respiratory rate, blood pressure, and different treatment measurements) to quantify the patient’s status and disease stage. Computer-aided diagnostic (CAD) systems use classical image processing, computer vision, machine learning, and deep learning methods for image analysis. Using image classification or segmentation algorithms, they find a region of interest (ROI) pointing to a specific location within the given image or an outcome of interest in the form of a label pointing to a diagnosis or prognosis. Computer science, with the evolution of artificial intelligence and machine learning techniques, facilitates the modeling and interpretation of results—from carrying out measurements to experiments and observations. Employing technological tools for collection, processing, and analysis incorporates understanding the patient’s status and developing the treatment plan. Achieving highly accurate models requires a huge dataset. This issue can be solved by having enough knowledge around medical data processing and their analysis. This reprint shows state-of-the-art research in the field of medical data processing and analysis. The medical data are represented in signals, images, raw data, protein sequences, etc. Processing and analysis of any kind can indicate specific issues in the medical sector such as diagnosis, detection, prediction, and segmentation to enhance the visualization of the processed data

Format
  • Hardback
License
© 2022 by the authors; CC BY-NC-ND license
Keywords
atrial fibrillation; perfect matrix of Lagrange differences; statistical indicator; decision support system; deep learning; heart failure; mortality; risk prediction; time-varying covariates; deep learning; motor imagery; Isolation Forest; anomaly detection; EEG signals classification; deep learning; PIMA dataset; Type-2 diabetes; Recurrent Neural Networks; weight optimization; Hamlet Pattern; protein sequence classification; SARS-CoV-2; bioinformatics; machine learning; deep learning; ensemble learning; heart disease; ECG; iris-spectrogram; scalogram; CNN; ResNet101; ShuffleNet; heart rhythm; H. pylori; atrophic gastritis; deep learning; convolution neural network; ShuffleNet; feature fusion; Canonical Correlation Analysis; ReliefF; generalized additive model; diabetes mellitus; blood glucose prediction; forecasting; long short-term memory; deep learning; nature-inspired feature selection; leukemia; CNN; white blood cell; classification; medical imaging; breast cancer; classification; histopathological image; review; COVID-19 pandemic; machine learning; hybrid models; forecasting; public health; accuracy and efficiency; n/a