Huang Di Nei Jing Su WenNature, Knowledge, Imagery in an Ancient Chinese Medical Text

Author(s):  
Paul Unschuld
Keyword(s):  
1991 ◽  
Vol 30 (04) ◽  
pp. 275-283 ◽  
Author(s):  
P. M. Pietrzyk

Abstract:Much information about patients is stored in free text. Hence, the computerized processing of medical language data has been a well-known goal of medical informatics resulting in different paradigms. In Gottingen, a Medical Text Analysis System for German (abbr. MediTAS) has been under development for some time, trying to combine and to extend these paradigms. This article concentrates on the automated syntax analysis of German medical utterances. The investigated text material consists of 8,790 distinct utterances extracted from the summary sections of about 18,400 cytopathological findings reports. The parsing is based upon a new approach called Left-Associative Grammar (LAG) developed by Hausser. By extending considerably the LAG approach, most of the grammatical constructions occurring in the text material could be covered.


2005 ◽  
Vol 13 (9) ◽  
pp. 1105-1121 ◽  
Author(s):  
Wesley W. Chu ◽  
Zhenyu Liu ◽  
Wenlei Mao ◽  
Qinghua Zou

1986 ◽  
Vol 81 (1) ◽  
pp. 103-111 ◽  
Author(s):  
G.William Moore ◽  
U.N. Riede ◽  
Richard A. Polacsek ◽  
Robert E. Miller ◽  
Grover M. Hutchins

2021 ◽  
pp. 102-107
Author(s):  
MARINA V. VEKLICH ◽  

The article presents a fact-based study of the verbalization of medical knowledge, verbal nomination as one of the ways to create a Russian medical dictionary. The linguistic materials collected during the research indicate the ability of the verb to terminate concepts. Verb-terms, in contrast to noun-terms, nominate specific processes, phenomena. Verb terms are included in word-formation nests along with noun terms. Verb terms fall into two groups: 1) branch verbs and 2) common verbs. The first group unites verbs characteristic of the medical field of knowledge, the second group includes verbs, the terminological nature of which is manifested in the composition of a phrase with a dependent noun-term. In such verb-nominal phrases, the verb either expands the meaning, or concretizes the existing one. Verb terms are used mainly in those branches of medicine that are associated with a specif- ic action (for example, surgery). Verb terms have the same grammatical categories as verbs of the general literary language. The results obtained can be used for further research on the cognitive properties of verbs-terms based on new sources.


2021 ◽  
Vol 2021 ◽  
pp. 1-16
Author(s):  
Sunil Kumar Prabhakar ◽  
Dong-Ok Won

To unlock information present in clinical description, automatic medical text classification is highly useful in the arena of natural language processing (NLP). For medical text classification tasks, machine learning techniques seem to be quite effective; however, it requires extensive effort from human side, so that the labeled training data can be created. For clinical and translational research, a huge quantity of detailed patient information, such as disease status, lab tests, medication history, side effects, and treatment outcomes, has been collected in an electronic format, and it serves as a valuable data source for further analysis. Therefore, a huge quantity of detailed patient information is present in the medical text, and it is quite a huge challenge to process it efficiently. In this work, a medical text classification paradigm, using two novel deep learning architectures, is proposed to mitigate the human efforts. The first approach is that a quad channel hybrid long short-term memory (QC-LSTM) deep learning model is implemented utilizing four channels, and the second approach is that a hybrid bidirectional gated recurrent unit (BiGRU) deep learning model with multihead attention is developed and implemented successfully. The proposed methodology is validated on two medical text datasets, and a comprehensive analysis is conducted. The best results in terms of classification accuracy of 96.72% is obtained with the proposed QC-LSTM deep learning model, and a classification accuracy of 95.76% is obtained with the proposed hybrid BiGRU deep learning model.


Author(s):  
Koby Crammer ◽  
Mark Dredze ◽  
Kuzman Ganchev ◽  
Partha Pratim Talukdar ◽  
Steven Carroll

Sign in / Sign up

Export Citation Format

Share Document