Medical Diagnosis
Medical diagnosis is undergoing a transformation driven by artificial intelligence, aiming to improve accuracy, efficiency, and accessibility of healthcare. Current research heavily utilizes machine learning models, including gradient boosting decision trees, support vector machines, convolutional neural networks, and transformers, often incorporating multimodal data (e.g., images, text, physiological signals) for enhanced diagnostic capabilities. This work addresses challenges such as algorithmic bias, interpretability, and the need for efficient and robust models, particularly in resource-constrained settings. The ultimate goal is to develop reliable and explainable AI-assisted diagnostic tools that augment clinical expertise and improve patient outcomes.
Papers
A Quantum Algorithm for Computing All Diagnoses of a Switching Circuit
Alexander Feldman, Johan de Kleer, Ion Matei
Machine Learning Sensors for Diagnosis of COVID-19 Disease Using Routine Blood Values for Internet of Things Application
Andrei Velichko, Mehmet Tahir Huyut, Maksim Belyaev, Yuriy Izotov, Dmitry Korzun
Diagnose Like a Radiologist: Hybrid Neuro-Probabilistic Reasoning for Attribute-Based Medical Image Diagnosis
Gangming Zhao, Quanlong Feng, Chaoqi Chen, Zhen Zhou, Yizhou Yu
Atomist or Holist? A Diagnosis and Vision for More Productive Interdisciplinary AI Ethics Dialogue
Travis Greene, Amit Dhurandhar, Galit Shmueli
Improving Clinical Efficiency and Reducing Medical Errors through NLP-enabled diagnosis of Health Conditions from Transcription Reports
Krish Maniar, Shafin Haque, Kabir Ramzan
Automated Systems For Diagnosis of Dysgraphia in Children: A Survey and Novel Framework
Jayakanth Kunhoth, Somaya Al-Maadeed, Suchithra Kunhoth, Younus Akbari