DI
Digital Imaging for Blood Diseases
This cluster of papers focuses on the automated analysis of blood cell images, particularly in the context of detecting malaria parasites and classifying leukemia. The research utilizes techniques such as image processing, convolutional neural networks, and machine learning for tasks including white blood cell segmentation, feature extraction, and automated diagnosis from microscopic blood images.
31,925
Publications
166,825
Citations
Loading papers...
Search by keywords
Filter by Type
- Article (56,530)
- Dataset (10,594)
- Book Chapter (6,029)
- Preprint (4,370)
- Libguides (2,534)
Filter by Open Access Type
- Open Access (40,270)
- Closed Access (45,452)
Filter by Authors
- Nasir Rajpoot (82)
- Mohd Yusoff Mashor (72)
- Carsten Marr (66)
- Jiang Liu (65)
- Anant Madabhushi (63)
Filter by Topics
- Digital Imaging for Blood Diseases (85,722)
- AI in cancer detection (16,823)
- Cell Image Analysis Techniques (12,424)
- Retinal Imaging and Analysis (9,535)
- COVID-19 diagnosis using AI (5,597)