Radiomics And Machine Learning In Medical Imaging
85 researchers across 10 institutions
Radiomics and machine learning in medical imaging extract quantitative features from medical images to build predictive and prognostic models. This research area investigates how complex patterns within imaging data, such as CT, MRI, and PET scans, can be correlated with clinical outcomes, treatment response, and disease progression. Researchers develop and apply advanced computational techniques, including deep learning algorithms and statistical modeling, to identify subtle imaging biomarkers that are not discernible to the human eye. The core questions revolve around improving diagnostic accuracy, personalizing treatment strategies, and predicting patient outcomes across various diseases.
This work holds significant relevance for Arkansas by addressing critical public health needs and supporting economic development in the healthcare sector. The state faces challenges with certain chronic diseases, and radiomics offers potential for earlier detection and more effective management. Furthermore, advancements in medical imaging analytics can bolster the state's growing health technology industry and attract specialized talent. Developing sophisticated AI tools for medical imaging can also enhance the capabilities of healthcare providers across Arkansas, improving patient care and potentially reducing healthcare costs.
This research area is inherently interdisciplinary, drawing upon expertise from computer science, engineering, physics, and clinical medicine. It connects with fields such as medical imaging techniques, artificial intelligence in cancer detection, and health research impacts. Engagement spans multiple Arkansas institutions, fostering collaboration and a broad base of expertise in this evolving domain.
Top Researchers
| Name | Institution | h-index | Citations | Career Stage | Badges |
|---|---|---|---|---|---|
| M. Emre Celebi | University of Central Arkansas | 52 | 12,124 | High Impact | |
| Shiva M. Singh | UAMS | 42 | 5,292 | High Impact | |
| Fred Prior | UAMS | 36 | 13,516 | Grant PI High Impact | |
| Kyle P. Quinn | University of Arkansas | 36 | 4,193 | Grant PI High Impact | |
| Benjamin Swanson | University of Arkansas | 31 | 5,997 | High Impact | |
| Magda El‐Shenawee | University of Arkansas | 27 | 2,631 | Grant PI High Impact | |
| Ting Liu | University of Arkansas | 27 | 3,057 | High Impact | |
| Ganesh Narayanasamy | UAMS | 15 | 872 | ||
| Aaron S. Kemp | UAMS | 14 | 780 | ||
| Lubaina Ehsan | UAMS | 14 | 654 | ||
| Konstantinos Arnaoutakis | UAMS | 13 | 604 | ||
| Kuruva Manohar | UAMS | 13 | 589 | ||
| Nidhi Gupta | University of Arkansas | 13 | 582 | ||
| Adam S. Morgenthau | UAMS | 13 | 1,994 | ||
| Sanaz Ameli | UAMS | 13 | 371 | ||
| Ukash Nakarmi | UA Little Rock | 12 | 440 | ||
| Jason Causey | Arkansas State University | 12 | 505 | ||
| Lakshmi Pillai | UAMS | 12 | 633 | ||
| Lawrence Tarbox | UAMS | 12 | 5,023 | ||
| Michael Rutherford | UAMS | 12 | 378 |
Related Research Areas
Cross-Institution Connections
Researchers at different institutions with overlapping expertise in Radiomics And Machine Learning In Medical Imaging.