Journal ArticleOpen Access
An online cursive handwritten medical words recognition system for busy doctors in developing countries for ensuring efficient healthcare service delivery
Authors
Author Affiliations
Kyushu University, Hiroshima University, Grameenphone (Bangladesh), Sylhet MAG Osmani Medical College, ...
Published InScientific Reports
Year2022
Citations24
Abstract
Doctors in developing countries are too busy to write digital prescriptions. Ninety-seven percent of Bangladeshi doctors write handwritten prescriptions, the majority of which lack legibility. Prescriptions are harder to read as they contain multiple languages. This paper proposes a machine learning approach to recognize doctors' handwriting to create digital prescriptions. A 'Handwritten Medical Term Corpus' dataset is developed containing 17,431 samples of 480 medical terms. In order to improve the recognition efficiency, this paper introduces a data augmentation technique to widen the variety and increase the sample size. A sequence of line data is extracted from the augmented images of 1,591,100 samples and fed to a Bidirectional Long Short-Term Memory (LSTM) network. Data augmentation includes pattern Rotating, Shifting, and Stretching…
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