ABSTRACT
Triaging of medical referrals can be completed using various machine learning techniques, but trained models with historical datasets may not be relevant as the clinical criteria for triaging are regularly updated and changed. This paper proposes the use of machine learning techniques coupled with the clinical prioritisation criteria (CPC) of Queensland (QLD), Australia, to deliver better triaging for referrals in accordance with the CPC's updates. The unique feature of the proposed model is its non-reliance on the past datasets for model training. Medical Natural Language Processing (NLP) was applied in the proposed approach to process the medical referrals, which are unstructured free text. The proposed multiclass classification approach achieved a Micro F1 score = 0.98. The proposed approach can help in the processing of two million referrals that the QLD health service receives annually; therefore, they can deliver better and more efficient health services.
Subject(s)
Machine Learning , Natural Language Processing , Australia , Referral and Consultation , TriageABSTRACT
The genome sequence of Rhizobium sp. strain 76, a bacterium isolated from the hyphosphere of Fusarium oxysporum f. sp. cucumerinum, is reported here. Genome sequencing and assembly yielded 5,375,961 bases with a 59.14% G+C content, comprising two chromosomes and one plasmid.