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miniproject: viral epidemics and disease
dheerajdhingani edited this page Jul 9, 2020
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Priya
Dheeraj kumar
- Use the communal corpus
epidemic50noCov
consisting of 50 articles. - Scrutinizing the 50 articles to know the true positives and false positives, that is, whether the articles are about viral epidemic or not.
- Using
ami search
to find whether the articles mentioned any comorbidity in a viral epidemic or not. - Sectioning the articles using
ami:section
to extract the relevant information on comorbidity. Annotating with dictionaries to create ami DataTables. - Refining and rerunning the query to get a corpus of 950 articles.
- Using relevant ML technique for the classification of data whether the articles are based on viral epidemic and the diseases/disorders that co-occur.
- A spreadsheet as well as a graph will be developed based on the comorbidity during a viral epidemic and their count.
- Development of the ML model for data classification on accuracy.
- Initially the communal corpus
epidemic50noCov
will be used. - Later a corpus of 950 articles will be created.
-
getpapers
to create the corpus of 950 articles fromEuPMC
. -
AMI
for creating and using dictionaries, sectioning. -
SPARQL
for creating dictionaries. -
KNIME
for workflow and analytics.
(by collaborator Dheeraj)
The objective of this mini project is to find the diseases with the help of the dictionary while the viral pandemic spreads by using ContentMine software ( getpapers and ami)
It's source is ICD-10(by WHO) and Wikidata Query Service and it was created using ami.
This is a group of 950 articles that have been downloaded from EuPMC via getpapers.
- I have read about getpapers and EuPMC and also I have read about advanced search in EuPMC and Reading its articles too.
- I am reading wikidata and learning how to update the dictionary.
- In this mini-project my main goal is that updating dictionary with ICD-10 using Wikidata.
- The 50 articles in communal corpus
epidemic50noCov
were binary classified as true and false positives manually and a spreadsheet was developed. -
ami search
was used in the corpus of 50 articles and the html DataTables ondisease
dictionary were created. - The corpus was sectioned using
ami section
as per the reference from https://github.com/petermr/openVirus/wiki/ami:section. -
getpapers
was used to create a corpus of950
articles regarding human viral epidemics(expect COVID-19) by the syntaxgetpapers -q "viral epidemics AND human NOT COVID NOT corona virus NOT SARS-Cov-2" -o mpc -f mpc/log.txt -k 950 -x -p
. JATS -950
files, alog
text document, XML -949
files & PDF -903
files were created. -
ami search
was used successfully in the 950 article corpus, which was segmented into 4 folders each containing 200-250 articles. - The 950 article corpus was sectioned successfully using
ami section
.
(in the 950 article corpus)
- To upload the
950
article corpus inGitHub
(Issue rectifying). - To binary classify true and false positives manually.
- To use
KNIME
software for binary classification. - To test the data classification on accuracy.
- Learning
KNIME
to use in binary classification.