Published May 23, 2020
| Version v1
Preprint
Open
A combination of 'pooling' with a prediction model can reduce by 73% the number of COVID-19 (Corona-virus) tests
Description
A method that combines
1) a neural network, for predicting whether a covid-19 is expected to be positive, based on the meta-data of the patient (i.e., their clinical symptoms if any), and
2) various test-pooling methods (a method originally suggested in the 1940's by Dorfman, but was much improved since)
shows that most of the coronavirus tests can be avoided. Our analysis compares 4 known pooling methods, and shows that 2d-pooling is the best.
Files
proposal_en.pdf
Files
(377.2 kB)
Name | Size | Download all |
---|---|---|
md5:d447e67399208fa06e902735241a0c09
|
377.2 kB | Preview Download |