The recent wide adoption of electronic medical records (EMRs) presents great opportunities and challenges for data mining. The EMR data are largely temporal, often noisy, irregular and high dimensional. This paper constructs a novel ordinal regression framework for predicting medical risk stratification from EMR. First, a conceptual view of EMR as a temporal image is constructed to extract a diverse set of features. Second, ordinal modeling is applied for predicting cumulative or progressive risk. The challenges are building a transparent predictive model that works with a large number of weakly predictive features, and at the same time, is stable against resampling variations. Our solution employs sparsity methods that are stabilized throu...
Abstract. Stability in clinical prediction models is crucial for transferability be-tween studies, y...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
The recent wide adoption of electronic medical records (EMRs) presents great opportunities and chall...
The recent wide adoption of Electronic Medical Records (EMR) presents great opportuni-ties and chall...
Electronic Medical Records (EMR) are increasingly used for risk prediction. EMR analysis is complica...
To date, our ability to accurately identify patients at high risk from suicidal behaviour, and thus ...
Electronic medical record (EMR) data is collected on a daily basis at hospitals and other healthcare...
In personalized medicine, two important tasks are predicting disease risk and selecting appropriate ...
AbstractEmerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These record...
In this paper, we attempt to utilize the information that is inherent in electronic health records (...
Prediction of occurrence of an event in a patients’ lifecourse is gradually becoming very important ...
Emerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These records have g...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
AbstractElectronic medical record (EMR) offers promises for novel analytics. However, manual feature...
Abstract. Stability in clinical prediction models is crucial for transferability be-tween studies, y...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
The recent wide adoption of electronic medical records (EMRs) presents great opportunities and chall...
The recent wide adoption of Electronic Medical Records (EMR) presents great opportuni-ties and chall...
Electronic Medical Records (EMR) are increasingly used for risk prediction. EMR analysis is complica...
To date, our ability to accurately identify patients at high risk from suicidal behaviour, and thus ...
Electronic medical record (EMR) data is collected on a daily basis at hospitals and other healthcare...
In personalized medicine, two important tasks are predicting disease risk and selecting appropriate ...
AbstractEmerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These record...
In this paper, we attempt to utilize the information that is inherent in electronic health records (...
Prediction of occurrence of an event in a patients’ lifecourse is gradually becoming very important ...
Emerging Electronic Medical Records (EMRs) have reformed the modern healthcare. These records have g...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
AbstractElectronic medical record (EMR) offers promises for novel analytics. However, manual feature...
Abstract. Stability in clinical prediction models is crucial for transferability be-tween studies, y...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...
Stability in clinical prediction models is crucial for transferability between studies, yet has rece...