Relation classification from unstructured medical text using feature based machine learning approach

Author(s):  
Saumaya Gupta ◽  
Amit Kumar Manjhvar
Author(s):  
Gleb Danilov ◽  
Alexandra Kosyrkova ◽  
Maria Shults ◽  
Semen Melchenko ◽  
Tatyana Tsukanova ◽  
...  

Unstructured medical text labeling technologies are expected to be highly demanded since the interest in artificial intelligence and natural language processing arises in the medical domain. Our study aimed to assess the agreement between experts who judged on the fact of pulmonary embolism (PE) in neurosurgical cases retrospectively based on electronic health records and assess the utility of the machine learning approach to automate this process. We observed a moderate agreement between 3 independent raters on PE detection (Light’s kappa = 0.568, p = 0). Labeling sentences with the method we proposed earlier might improve the machine learning results (accuracy = 0.97, ROC AUC = 0.98) even in those cases that could not be agreed between 3 independent raters. Medical text labeling techniques might be more efficient when strict rules and semi-automated approaches are implemented. Machine learning might be a good option for unstructured text labeling when the reliability of textual data is properly addressed. This project was supported by the RFBR grant 18-29-22085.


2018 ◽  
Vol 7 (4.5) ◽  
pp. 257
Author(s):  
Salina Adinarayana ◽  
E Ilavarasan

The Opinion Mining (OM) from mobile based social media content (SMC) is more challenging compared to topic-based mining, and it cannot be performed based on just examining the presence of single words in the text containing opinion expressions. Moreover, the existing systems of opinion   classification find that a large number of features that are not feasible for the mobile environment. The existing methods of OM in this mobile environment do not consider the semantic orientation of the SMC in the review. The proposed machine learning approach extends the feature-based classification approach to identify the orientation of the phrase on taking context into account to improve the accuracy.   


Sign in / Sign up

Export Citation Format

Share Document