grant

Natural language processing and medical imaging analysis for multi-modality computer assisted diagnosis of ophthalmic diseases

Organization YALE UNIVERSITYLocation NEW HAVEN, UNITED STATESPosted 1 Sept 2024Deadline 31 Aug 2027
NIHUS FederalResearch GrantFY2025AI AugmentedAI assistedAI based modelAI drivenAI enhancedAI integratedAI modelAI poweredAI systemAgeArtificial IntelligenceArtificial Intelligence enhancedAugmented by AIAugmented by the AIAugmented with AIAugmented with the AIBenchmarkingBest Practice AnalysisBlindnessClinicalComputer AssistedComputer ReasoningComputer aided diagnosisComputer-Assisted DiagnosisDiagnosisDiseaseDisorderDrugsEarly InterventionElectronic Health RecordFoundationsGenderGoalsHistoryImageMachine IntelligenceMedical ImagingMedicationMethodsModalityModelingNatural Language ProcessingOphthalmologyPatient outcomePatient-Centered OutcomesPatient-Focused OutcomesPatientsPharmaceutical PreparationsPublic HealthRaceRacesRecording of previous eventsResearchSpecialtyStructureSubgroupSymptomsTextValidationaccountable AIaccountable artificial intelligenceaccurate diagnosisagesartificial intelligence assistedartificial intelligence augmentedartificial intelligence drivenartificial intelligence integratedartificial intelligence modelartificial intelligence poweredartificial intelligence-based modelbenchmarkcomputer aideddisease diagnosisdrug/agentelectronic health care recordelectronic health medical recordelectronic health plan recordelectronic health registryelectronic medical health recordenhanced with AIenhanced with Artificial Intelligenceethical AIethical artificial intelligencehistoriesimage-based methodimagingimaging methodimaging modalityimprovedmedical specialtiesmulti-modal datamulti-modal datasetsmulti-modalitymultimodal datamultimodal datasetsmultimodalitynatural language understandingpatient oriented outcomespatient screeningracialracial backgroundracial originresponsible AIresponsible artificial intelligencetrustworthy AItrustworthy artificial intelligencevalidationsvision lossvisual loss
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Full Description

The goal of this study is to develop and evaluate multi-modality artificial intelligence (AI)-assisted
diagnosis models. Timely and accurate diagnosis of diseases for early intervention is key to maximizing patient outcomes. This is particularly true in ophthalmology, where timely treatment is crucial for minimizing vision loss. In recent years, AI has been widely applied in medical specialties such as ophthalmology through computer-assisted diagnosis, which provides scalable disease diagnosis with the potential for screening patients earlier. Yet, most methods use a single imaging modality for diagnosis, which fails to capture other modalities such as different imaging types, patient symptoms, medication history, or lab results information documented in electronic health records (EHRs) that are critical for disease diagnosis. Another important concern is the generalization capability of AI models. For example, only a limited number of studies have conducted external validations, and the impact of factors such as age, race, and gender on the generalization of AI models remains largely unknown in ophthalmology. The specific aims are to (1) propose NLP methods for clinical concept recognition and normalization from clinical notes; (2) develop multi-modality AI models that use medical images, free-text notes, and structured information for ophthalmic disease diagnosis; and (3) benchmark and investigate potential solutions to improve the downstream accountability of AI models, including external validations, subgroup analysis, and generalization to other diseases beyond ophthalmology.

Grant Number: 5R00LM014024-04
NIH Institute/Center: NIH

Principal Investigator: Qingyu Chen

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