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projects [2018/05/14 22:25]
shyam [Accrual of patients to Clinical Trials (ACT) network]
projects [2019/11/21 20:36]
shyam
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-==== Learning Electronic Medical Record (LEMRsystem ====+==== Genomics Research and Innovation Network (GRIN) ====
  
 {{ wiki:lemur_transparent.png?150x0}} {{ wiki:lemur_transparent.png?150x0}}
  
-Electronic medical records (EMRsare capturing increasing amounts of patient data that can be leveraged by machine-learning methods for computerized decision support. My work focuses on the development of intelligent EMRs that contain adaptive and learning components to provide decision support using the right dataat the right time. In additionI work with team of collaborators in developing and implementing machine-learning methods for detecting adverse drug events and for identifying anomalies in clinical management of patients.+Genomics Research and Innovation Network (GRINis a federated network that is developing two portals for researchers: (A) Prep-to- research portal. Investigators can execute genotypephenotype, or combined genotype/phenotype queries, and receive aggregate results in real time; and (B) Study portalWith proper approvalspatient-level data are readily transferred to cloud-hosted environment.
  
-This work is funded by a [[https://projectreporter.nih.gov/project_info_description.cfm?aid=9030245|R01 grant]] from the NLM, NIH.+This work is funded by a [[https://projectreporter.nih.gov/project_info_description.cfm?aid=9818382|U01 grant]] from the NCATS, NIH.
  
  
  
-==== Personalized modeling for precision medicine ==== 
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-In predictive modeling in medicine, the typical paradigm consists of learning a single model from a database of individuals, which is then applied to predict outcomes for any future individual. Such a model is called a population-wide model because it is intended to be applied to an entire population of future individuals. In contrast, personalized modeling focuses on learning models that are tailored to the characteristics of the individual at hand. Personalized models that are optimized to perform well for a specific individual are likely to have better predictive performance than the typical population-wide models that are optimized to have good predictive performance on average on all future individuals. Moreover, personalized models can identify features such as genomic factors that are specific for an individual thus enabling precision medicine.