scholarly journals Automated mapping for geospatial ontologies integration

Annals of GIS ◽  
2017 ◽  
Vol 23 (4) ◽  
pp. 269-279
Author(s):  
Sana Chaabane ◽  
Wassim Jaziri
Author(s):  
Leonardo A. Hardtke ◽  
Paula D. Blanco ◽  
Héctor F.del Valle ◽  
Graciela I. Metternicht ◽  
Walter F. Sione

2018 ◽  
Vol 25 (10) ◽  
pp. 1292-1300 ◽  
Author(s):  
Sharidan K Parr ◽  
Matthew S Shotwell ◽  
Alvin D Jeffery ◽  
Thomas A Lasko ◽  
Michael E Matheny

Abstract Objective Standards such as the Logical Observation Identifiers Names and Codes (LOINC®) are critical for interoperability and integrating data into common data models, but are inconsistently used. Without consistent mapping to standards, clinical data cannot be harmonized, shared, or interpreted in a meaningful context. We sought to develop an automated machine learning pipeline that leverages noisy labels to map laboratory data to LOINC codes. Materials and Methods Across 130 sites in the Department of Veterans Affairs Corporate Data Warehouse, we selected the 150 most commonly used laboratory tests with numeric results per site from 2000 through 2016. Using source data text and numeric fields, we developed a machine learning model and manually validated random samples from both labeled and unlabeled datasets. Results The raw laboratory data consisted of >6.5 billion test results, with 2215 distinct LOINC codes. The model predicted the correct LOINC code in 85% of the unlabeled data and 96% of the labeled data by test frequency. In the subset of labeled data where the original and model-predicted LOINC codes disagreed, the model-predicted LOINC code was correct in 83% of the data by test frequency. Conclusion Using a completely automated process, we are able to assign LOINC codes to unlabeled data with high accuracy. When the model-predicted LOINC code differed from the original LOINC code, the model prediction was correct in the vast majority of cases. This scalable, automated algorithm may improve data quality and interoperability, while substantially reducing the manual effort currently needed to accurately map laboratory data.


1993 ◽  
Vol 30 (1) ◽  
pp. 69-72
Author(s):  
R. I. El'man ◽  
Ye. D. Bodanskiy
Keyword(s):  

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