Clinical de-identification aims to identify Protected Health Information in clinical data, enabling data sharing and publication. First automatic de-identification systems were based on rules or on machine learning methods, limited by language changes, lack of context awareness and time consuming feature engineering. Newer deep learning techniques for sequence labeling have shown better results with a reduction in feature engineering efforts and the use of word representation techniques in vector space. However, they are not able to jointly represent the polysemic and context-dependent nature of words, as well as their morpho-syntactic mutations characteristic of handwriting. To address these limitations, a new de-identification approach ba...
Background Text mining and natural language processing of clinical text, such as notes from electron...
The de-identification of clinical reports is essential to protect the confidentiality of patients. T...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Clinical de-identification aims to identify Protected Health Information in clinical data, enabling ...
The de-identification of clinical notes is crucial for the reuse of electronic clinical data and is ...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
Drug named entity recognition (DNER) becomes the prerequisite of other medical relation extraction s...
Abstract Background Entity recognition is one of the most primary steps for text analysis and has lo...
The COrona VIrus Disease 19 (COVID-19) pandemic required the work of all global experts to tackle it...
Drug-Named Entity Recognition (DNER) for biomedical literature is a fundamental facilitator of Infor...
As new high-throughput technologies have created an explosion of biomedical literature, there arises...
The COrona VIrus Disease 19 (COVID-19) pandemic required the work of all global experts to tackle it...
Today, we are seeing an ever-increasing number of clinical notes that contain clinical results, imag...
Background Text mining and natural language processing of clinical text, such as notes from electron...
The de-identification of clinical reports is essential to protect the confidentiality of patients. T...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Clinical de-identification aims to identify Protected Health Information in clinical data, enabling ...
The de-identification of clinical notes is crucial for the reuse of electronic clinical data and is ...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
In the last years, the need to de-identify privacy-sensitive information within Electronic Health Re...
Drug named entity recognition (DNER) becomes the prerequisite of other medical relation extraction s...
Abstract Background Entity recognition is one of the most primary steps for text analysis and has lo...
The COrona VIrus Disease 19 (COVID-19) pandemic required the work of all global experts to tackle it...
Drug-Named Entity Recognition (DNER) for biomedical literature is a fundamental facilitator of Infor...
As new high-throughput technologies have created an explosion of biomedical literature, there arises...
The COrona VIrus Disease 19 (COVID-19) pandemic required the work of all global experts to tackle it...
Today, we are seeing an ever-increasing number of clinical notes that contain clinical results, imag...
Background Text mining and natural language processing of clinical text, such as notes from electron...
The de-identification of clinical reports is essential to protect the confidentiality of patients. T...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...