The encoding of Electronic Medical Records is a complex and time-consuming task. We report on a machine learning model for proposing diagnoses and procedures codes, from a large realistic dataset of 245 000 electronic medical records at the University Hospitals of Geneva. Our study particularly focuses on the impact of training data quantity on the model’s performances. We show that the performances of the models do not increase while encoded instances from previous years are exploited for learning data. Furthermore, supervised models are shown to be highly perishable: we show a potential drop in performances of around -10% per year. Consequently, great and constant care must be exercised for designing and updating the content of such knowl...
The task of identifying one or more diseases associated with a patient’s clinical condition is often...
Health informatics is a vital technology that holds great promise in the healthcare setting. We desc...
Increasing efforts in the collection, standardization, and maintenance of large scale longitudinal e...
International audiencen this paper, we present a comparison of two approaches to automatically de-id...
Hence, the purpose of healthcare informatics is to detect patterns in data and then learn from the p...
This paper describes the architecture of an encoding system which aim is to be implemented as a codi...
In this work, we investigate the benefits and complications of using machine learning on EHR data. W...
2018-10-11With the widespread adoption of electronic health records (EHRs), US hospitals now digital...
Spurred by advances in processing power, memory, storage, and an unprecedented wealth of data, compu...
The rising complexity in healthcare, exacerbated by an ageing population, results in ineffective dec...
In order to measure the medical activity, hospitals are required to manually encode information conc...
Computerization in health care in general, and in the operating room (OR) and intensive care unit (I...
International audienceObjective: The objective of this article was to compare the performances of he...
This research lays down foundations for a stronger presence of machine learning in the emergency dep...
Abstract The use of machine learning (ML) in healthcare has enormous potential for im...
The task of identifying one or more diseases associated with a patient’s clinical condition is often...
Health informatics is a vital technology that holds great promise in the healthcare setting. We desc...
Increasing efforts in the collection, standardization, and maintenance of large scale longitudinal e...
International audiencen this paper, we present a comparison of two approaches to automatically de-id...
Hence, the purpose of healthcare informatics is to detect patterns in data and then learn from the p...
This paper describes the architecture of an encoding system which aim is to be implemented as a codi...
In this work, we investigate the benefits and complications of using machine learning on EHR data. W...
2018-10-11With the widespread adoption of electronic health records (EHRs), US hospitals now digital...
Spurred by advances in processing power, memory, storage, and an unprecedented wealth of data, compu...
The rising complexity in healthcare, exacerbated by an ageing population, results in ineffective dec...
In order to measure the medical activity, hospitals are required to manually encode information conc...
Computerization in health care in general, and in the operating room (OR) and intensive care unit (I...
International audienceObjective: The objective of this article was to compare the performances of he...
This research lays down foundations for a stronger presence of machine learning in the emergency dep...
Abstract The use of machine learning (ML) in healthcare has enormous potential for im...
The task of identifying one or more diseases associated with a patient’s clinical condition is often...
Health informatics is a vital technology that holds great promise in the healthcare setting. We desc...
Increasing efforts in the collection, standardization, and maintenance of large scale longitudinal e...