Description
Book SynopsisIncreased use of artificial intelligence (AI) is being deployed in many hospitals and healthcare settings to help improve health care service delivery. Machine learning (ML) and deep learning (DL) tools can help guide physicians with tasks such as diagnosis and detection of diseases and assisting with medical decision making.
This edited book outlines novel applications of AI in e-healthcare. It includes various real-time/offline applications and case studies in the field of e-Healthcare, such as image recognition tools for assisting with tuberculosis diagnosis from x-ray data, ML tools for cancer disease prediction, and visualisation techniques for predicting the outbreak and spread of Covid-19.
Heterogenous recurrent convolution neural networks for risk prediction in electronic healthcare record datasets are also reviewed.
Suitable for an audience of computer scientists and healthcare engineers, the main objective of this book is to demonstrate effective use of AI in healthcare by describing and promoting innovative case studies and finding the scope for improvement across healthcare services.
Table of Contents
- Chapter 1: Introduction to AI in E-healthcare
- Chapter 2: The scope and future outlook of artificial intelligence in healthcare systems
- Chapter 3: Class dependency-based learning using Bi-LSTM coupled with the transfer learning of VGG16 for the diagnosis of tuberculosis from chest X-rays
- Chapter 4: Drug discovery clinical trial exploratory process and bioactivity analysis optimizer using deep convolutional neural network for E-prosperity
- Chapter 5: An automated NLP methodology to predict ICU mortality CLINICAL dataset using multiclass grouping with LSTM RNN approach
- Chapter 6: Applying machine learning techniques to build a hybrid machine learning model for cancer prediction
- Chapter 7: AI in healthcare: challenges and opportunities
- Chapter 8: Impression of artificial intelligence in e-healthcare medical applications
- Chapter 9: Heterogeneous recurrent convolution neural network for risk prediction in the EHR dataset
- Chapter 10: A narrative review and impacts on trust for data in the healthcare industry using artificial intelligence
- Chapter 11: Analysis of COVID-19 outbreak using data visualization techniques: a review
- Chapter 12: Artificial intelligence-based electronic health records for healthcare
- Chapter 13: Automatic structuring on Chinese ultrasound report of Covid-19 diseases via natural language processing