Deep Learning for Medicine培训
Introduction to Deep Learning
Impact on the Medical Industry
Successes and Failures in Deep Learning in Various Industries
Understanding Deep Learning
Artificial Intelligence and Machine Learning
Basic Concepts of Deep Learning
Applications for Deep Learning
The role of Big Data in Deep Learning
Overview of Common Deep Learning Techniques
Neural Networks
Natural Language Processing
Image Recognition
Speech Recognition
Sentiment Analysis
Applying Deep Learning Techniques to Issues in Medicine
Exploring the Opportunities for Improvement in the Medical Field
Examining the Applicability of Deep Learning Techniques to the Cited Issues
Exploring Deep Learning Case Studies for Medicine
DeepVentricle Algorithm for Ventricular Segmentation in Cardiac MR by Arterys
Skin Cancer Diagnosis Algorithm by Stanford
Heart Failure Prediction Algorithm by Sutter Health and the Georgia Institute of Technology
Radiology Scans Diagnoses Across All Modalities by Behold.AI
Clinical Decision Support Technologies by Enlitic
Personalized Medicine and Therapies by Deep Genomics
Decoding Cancer with Freenome
Detection of Diabetic Retinopathy by Google
Chatbot for Prevention and Diagnosis of Disease by Babylon Health
Limitations of Deep Learning
Ethical Implications and Data Privacy Concerns in Deep Learning
Creating New Business Models Based on Deep Learning-Enabled Platforms and Ecosystems
Bringing it All Together
Choosing Deep Learning Solutions that Fit Your Needs
Strategies for Adoption of Deep Learning Technologies
Team Communication and Managerial Buy-In
Conversations with Managers and Leaders
Conversations with Engineers and Data Scientists
Summary and Conclusion