Differential Diagnosis
Differential diagnosis, the process of identifying the most likely disease from a range of possibilities, is a crucial step in medical practice. Current research focuses on automating this process using machine learning, particularly employing transformer-based models, deep neural networks (including U-Nets and nnU-Nets), and reinforcement learning algorithms to analyze diverse data sources such as medical images (MRI, CT), patient records, and even handwriting samples. These efforts aim to improve diagnostic accuracy, speed, and accessibility, potentially assisting clinicians in making more informed decisions and reducing diagnostic errors. The development of large, well-annotated datasets, including those incorporating differential diagnoses and incorporating meta-information, is also a key area of focus to improve model performance and generalizability.
Papers
Automatic Differential Diagnosis using Transformer-Based Multi-Label Sequence Classification
Abu Adnan Sadi, Mohammad Ashrafuzzaman Khan, Lubaba Binte Saber
Leveraging Persistent Homology for Differential Diagnosis of Mild Cognitive Impairment
Ninad Aithal, Debanjali Bhattacharya, Neelam Sinha, Thomas Gregor Issac