1. |
| Li, Professor W | University of Reading | Advancing machine learning to achieve real-world early detection and personalised disease outcome prediction of inflammatory arthritis | 619,660 |
2. |
| Kinross, Dr J | Imperial College London | INDICATE: AI-enabled data curation, quality and fact-checking for medical documents | 574,026 |
3. |
| Erden, Dr M | Heriot-Watt University | Autonomous and Intelligent Laparoscopy Trainer with Real-Time Feedback | 619,672 |
4. |
| Chung, Professor K | Imperial College London | AI for Personalised respiratory health and pollution (AI-Respire) | 616,998 |
5. |
| Rueckert, Professor D | Imperial College London | Privacy-preserving Artificial Intelligence for Fibrosis Progression Prediction for Patients with Neovascular AMD | 381,435 |
5. |
| Lotery, Professor AJ | University of Southampton | PrivateEyes: Privacy-preserving Artificial Intelligence and Disease Progression Prediction for Patients with AMD | 136,992 |
5. |
| Sivaprasad, Professor S | UCL | PrivateEyes: Privacy-preserving Artificial Intelligence and Disease Progression Prediction for Patients with AMD | 100,181 |
6. |
| Yau, Professor C | University of Oxford | Clinical prediction foundation models for individuals with multiple long-term conditions | 615,516 |
7. |
| Ennis, Professor S | University of Southampton | Artificial intelligence methods applied to Genomic Data for improved health (AGENDA) | 624,229 |
8. |
| Keane, Dr PA | UCL | From 2 Million to 20 Million: Scaling and Validating a Foundation Model for Ophthalmology | 468,372 |
9. |
| Collins-Fekete, Dr C | UCL | AI-based diagnosis for improving classification of bone and soft tissue tumours across the UK | 613,172 |
10. |
| Mascolo, Professor C | University of Cambridge | RELOAD: REspiratory disease progression through LOngitudinal Audio Data machine learning | 608,960 |
11. |
| Shah, Dr A D | UCL | Optimisation of natural language processing for real-time structured clinical data capture in electronic health records | 605,054 |
12. |
| Brage, Dr S | University of Cambridge | AI-enabled targeting of public health interventions through dynamic characterisation of the environment | 618,927 |
13. |
| Bano, Dr S | UCL | AID-PitSurg: AI-enabled Decision support in Pituitary Surgery to reduce complications | 557,392 |
14. |
| Pope, Professor FD | University of Birmingham | Artificial Intelligence for Pollen and Spore Detection, Forecasting and Human Health (AIPS) | 530,358 |
15. |
| Selvarajah, Dr D | University of Sheffield | A Novel Artificial Intelligence Powered Neuroimaging Biomarker for Chronic Pain. | 445,541 |
16. |
| Clark, Professor T | London Sch of Hygiene & Tropic. Medicine | Infection-AID: AI assisted genomic profiling to inform the Diagnosis, personalised treatment and control of infections | 518,745 |
17. |
| Wang, Dr Y | Newcastle University | Leveraging universal fractal geometry to develop new AI for neuroimaging | 619,864 |
18. |
| Liu, Professor L | University of Leicester | Self-learning AI-based digital twins for accelerating clinical care in respiratory emergency admissions (SLAIDER) | 619,667 |
19. |
| Wood, Dr A | University of Cambridge | Efficient AI tools for equitable handling of missing values in population-wide e-health records to advance prevention of chronic diseases | 618,984 |
20. |
| Riley, Professor R | University of Birmingham | Sample Size guidance for developing and validating reliable and fair AI PREDICTion models in healthcare (SS-PREDICT) | 543,399 |
21. |
| Carneiro, Professor G | University of Surrey | People-centered Mammogram Analysis | 435,211 |
22. |
| Stracquadanio, Professor G | University of Edinburgh | IDERT: Intelligent Deimmunization for Enzyme Replacement Therapies | 616,358 |
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