Early Detection
Early detection research focuses on developing methods to identify diseases and anomalies at their earliest stages, improving treatment outcomes and resource allocation. Current efforts utilize diverse machine learning models, including deep convolutional neural networks (CNNs), graph convolutional networks (GCNs), recurrent neural networks (RNNs), and hybrid quantum-classical approaches, often applied to multimodal data such as medical images, sensor readings, and patient-reported symptoms. This field is significantly impacting healthcare, agriculture, and cybersecurity by enabling faster, more accurate diagnoses and proactive interventions, ultimately improving patient care, crop yields, and system security.
Papers
A Comprehensive Review of Artificial Intelligence Applications in Major Retinal Conditions
Hina Raja, Taimur Hassan, Bilal Hassan, Muhammad Usman Akram, Hira Raja, Alaa A Abd-alrazaq, Siamak Yousefi, Naoufel Werghi
Breast Cancer classification by adaptive weighted average ensemble of previously trained models
Mosab S. M. Farea, zhe chen
Early Detection of Depression and Eating Disorders in Spanish: UNSL at MentalRiskES 2023
Horacio Thompson, Marcelo Errecalde
Early detection of inflammatory arthritis to improve referrals using multimodal machine learning from blood testing, semi-structured and unstructured patient records
Bing Wang, Weizi Li, Anthony Bradlow, Antoni T. Y. Chan, Eghosa Bazuaye