Statistical methods have been widely used in studies of public health. Although useful in clinical research and public health policy making, these methods could not find correlation among health conditions automatically, or capture the temporal evolution of causes of death correctly. To cope with two challenges above, we implement the unsupervised machine learning method "topic model" to study the United States death reporting data. Our model successfully groups morbidities based on their correlation, and reveals the temporal evolution of these groups from 1999 to 2014. This result is validated by existing literature, and provides a novel view that enables clinical practitioners to make more accurate healthcare decisions, and publ...
Causes of death represent a well-established data source in demography, collected systematically for...
International audienceBACKGROUND: Reliable and timely information on the leading causes of death in ...
Abstract Background Machine learning (ML) algorithms have been successfully employed for prediction ...
Abstract-Machine learning is changing all aspects of life, and it is becoming increasingly common in...
Thesis (Master's)--University of Washington, 2020Globally, injuries were responsible for 8% of death...
Abstract Background Accurate, comprehensive, cause-sp...
Background: Accurate, comprehensive, cause-specific mortality estimates are crucial for informing pu...
BACKGROUND: Data on causes of death by age and sex are a critical input into health decision-making....
International audienceBACKGROUND: Mortality surveillance is of fundamental importance to public heal...
Background: Insight into health conditions associated with death can inform healthcare policy. We ai...
Background: The inability to identify dates of death in insurance claims data is a major limitation ...
Background: Insight into health conditions associated with death can inform healthcare policy. We ai...
Background: Insight into health conditions associated with death can inform healthcare policy. We ai...
The lack of a single, cohesive examination of cause-specific mortality in the United States has been...
The inability to identify dates of death in insurance claims data is the United States is a major li...
Causes of death represent a well-established data source in demography, collected systematically for...
International audienceBACKGROUND: Reliable and timely information on the leading causes of death in ...
Abstract Background Machine learning (ML) algorithms have been successfully employed for prediction ...
Abstract-Machine learning is changing all aspects of life, and it is becoming increasingly common in...
Thesis (Master's)--University of Washington, 2020Globally, injuries were responsible for 8% of death...
Abstract Background Accurate, comprehensive, cause-sp...
Background: Accurate, comprehensive, cause-specific mortality estimates are crucial for informing pu...
BACKGROUND: Data on causes of death by age and sex are a critical input into health decision-making....
International audienceBACKGROUND: Mortality surveillance is of fundamental importance to public heal...
Background: Insight into health conditions associated with death can inform healthcare policy. We ai...
Background: The inability to identify dates of death in insurance claims data is a major limitation ...
Background: Insight into health conditions associated with death can inform healthcare policy. We ai...
Background: Insight into health conditions associated with death can inform healthcare policy. We ai...
The lack of a single, cohesive examination of cause-specific mortality in the United States has been...
The inability to identify dates of death in insurance claims data is the United States is a major li...
Causes of death represent a well-established data source in demography, collected systematically for...
International audienceBACKGROUND: Reliable and timely information on the leading causes of death in ...
Abstract Background Machine learning (ML) algorithms have been successfully employed for prediction ...