跳到主要內容

很遺憾,我們無法支援你的瀏覽器。如果可以,請升級到新版本,或使用 Mozilla Firefox、Microsoft Edge、Google Chrome 或 Safari 14 或更新版本。如果無法升級,而且需要支援,請將你的回饋寄給我們。

我們衷心感謝你對這個新體驗的回饋。告訴我們你的想法 打開新的分頁/視窗

Elsevier
與我們共同出版

Medical Robotics and Computer Assisted Surgery

Aim & scope

Medical Robotics and Computer Assisted Surgery: AI-enhanced, Data-driven, and Evidence-based Approaches series presents a comprehensive suite of reference books containing foundational knowledge on the human-surgical robot interface, presenting researchers, scientists, clinicians, and students with practical and up-to-date resources on the application and integration of computational techniques into robots for the treatment and diagnosis of human disease.

This book series will contain volumes presenting major aspects of the complex range of modern healthcare techniques and technologies utilizing robots that are used to diagnose, monitor, and treat diseases or medical conditions affecting humans. Volumes will cover topics on medical robotics and intelligent healthcare technologies; automation for surgery; surgical navigation and augmented reality systems; robotic process automation (RPA) in healthcare; machine learning and cognitive surgical robotics; bio-inspired robotics and bio mimics; emerging, multi-specialty applications of robotic technologies; and robot structure design and control, amongst others.

Image Cover for Medical Robotics and Computer Assisted Surgery

The book series will not only emphasize traditional computational techniques but will discuss AI, deep learning, and machine learning in the robotics field with broad coverage of basic scientific applications. This series will be suitable for a wide range of readers from biomedical engineering, mechanical engineering, electrical engineering, computer science, and medicine who are developing robotic systems and computer-assisted tools used in surgical procedures and medical interventions.

Audience

Researchers, scientists, professionals, graduate students, and experts working in robotics -biomedical engineering, computer science, control engineering, mechanical engineering, electrical engineering, healthcare IoT, computational intelligence, machine learning, medical image processing, medical informatics, clinical big data analytics.

Series Editors

Image of Tamás Haidegger

DTH

Dr Tamás Haidegger

Associate Professor / EKIK Director

Óbuda University, Budapest, Hungary

繼續閱讀 Dr Tamás Haidegger
Image of Dr. Subhendu Kumar Pani

DSKP

Dr Subhendu Kumar Pani

Professor, Department of Computer Science and Engineering

Orissa Engineering College, BPUT, Odisha, India

繼續閱讀 Dr Subhendu Kumar Pani

Editorial Board

SD

Sujata Dash

Department of Computer Application

Maharaja Sriram Chandra Bhanja Deo University Baripada, Odisha, India

繼續閱讀 Sujata Dash

JB

Jacky Baltes

Director Educational Robotics Center (Electrical Engineering)

National Taiwan Normal University

繼續閱讀 Jacky Baltes

SS

Soroush Sadeghnejad

Assistant Professor, Department of Biomedical Engineering

Amirkabir University of Technology, Tehran, Iran

繼續閱讀 Soroush Sadeghnejad

AA

Ajith Abraham

Director

Machine Intelligence Research Labs (MIR Labs)

繼續閱讀 Ajith Abraham

OC

Oscar Castillo

Professor of Computer Science in the Graduate Division

Tijuana Institute of Technology, Tijuana, Mexico

繼續閱讀 Oscar Castillo