Staged reflexive artificial intelligence driven testing algorithms for early diagnosis of pituitary disorders
Autor: | Syed Ali Imran, Syed Sibte Raza Abidi, William Van Woensel, David B. Clarke, Manal O. Elnenaei |
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Rok vydání: | 2021 |
Předmět: |
Male
Pituitary disorder Pituitary Diseases Clinical Biochemistry computer.software_genre Proof of Concept Study Retrospective data Testing protocols Artificial Intelligence Pregnancy Humans Medicine Diagnosis Computer-Assisted Retrospective Studies Protocol (science) Endocrine Test business.industry General Medicine Middle Aged Expert system Early Diagnosis Critical Pathways Reflex Female Artificial intelligence Pituitary dysfunction business computer Blood Chemical Analysis |
Zdroj: | Clinical Biochemistry. 97:48-53 |
ISSN: | 0009-9120 |
DOI: | 10.1016/j.clinbiochem.2021.08.005 |
Popis: | Background Sellar masses (SM) frequently present with insidious hormonal dysfunction. We previously showed that, by utilizing a combined reflex/reflecting approach involving a laboratory clinician (LC) on common endocrine test results requested by non-specialists, and subsequently adding further warranted tests, previously undiagnosed pituitary disorders can be identified. However, manually employing these strategies by an LC is not feasible for wider screening of pituitary disorders. Objective The aim of this study was to compare the accuracy and financial impact of an Artificial Intelligence (AI) based, fully computerized reflex protocol with manual reflex/reflective intervention protocol led by an LC. Methods We developed a proof-of-concept AI-based framework to fully computerize multi-stage reflex testing protocols for pituitary dysfunction using automated reasoning methods. We compared the efficacy of this AI-based protocol with a reflex/reflective protocol based on manually curated retrospective data in identifying pituitary dysfunction based on 12 months of laboratory testing. Results The AI-based reflex protocol, as compared with the manual protocol, would have identified laboratory tests for add-on that either directly matched or included all manual add-on tests in 92% of cases, and recommended a similar specialist referral in 90% of the cases. The AI-based protocol would have issued 2.8 times the total number of manual add-on laboratory tests at an 85% lower operation cost than the manual protocol when considering marginal test costs, technical staff and specialist salary. Conclusion/Discussion Our AI-based reflex protocol can successfully identify patients with pituitary dysfunction, with lower estimated laboratory cost. Future research will focus on enhancing the protocol’s accuracy and incorporating the AI-based reflex protocol into institutional laboratory and hospital information systems for the detection of undiagnosed pituitary disorders. |
Databáze: | OpenAIRE |
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