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Diagnostic quality model (DQM): an integrated framework for the assessment of diagnostic quality when using AI/ML
23
Zitationen
16
Autoren
2023
Jahr
Abstract
BACKGROUND: Laboratory medicine has reached the era where promises of artificial intelligence and machine learning (AI/ML) seem palpable. Currently, the primary responsibility for risk-benefit assessment in clinical practice resides with the medical director. Unfortunately, there is no tool or concept that enables diagnostic quality assessment for the various potential AI/ML applications. Specifically, we noted that an operational definition of laboratory diagnostic quality - for the specific purpose of assessing AI/ML improvements - is currently missing. METHODS: prompted an expert roundtable discussion. Here we present a conceptual diagnostic quality framework for the specific purpose of assessing AI/ML implementations. RESULTS: The presented framework is termed diagnostic quality model (DQM) and distinguishes AI/ML improvements at the test, procedure, laboratory, or healthcare ecosystem level. The operational definition illustrates the nested relationship among these levels. The model can help to define relevant objectives for implementation and how levels come together to form coherent diagnostics. The affected levels are referred to as scope and we provide a rubric to quantify AI/ML improvements while complying with existing, mandated regulatory standards. We present 4 relevant clinical scenarios including multi-modal diagnostics and compare the model to existing quality management systems. CONCLUSIONS: is essential to navigate the complexities of clinical AI/ML implementations. The presented diagnostic quality framework can help to specify and communicate the key implications of AI/ML solutions in laboratory diagnostics.
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Autoren
Institutionen
- Massachusetts General Hospital(US)
- Peter MacCallum Cancer Centre(AU)
- GZA Ziekenhuizen Campus Sint-Augustinus(BE)
- University of California, San Francisco(US)
- Memorial Sloan Kettering Cancer Center(US)
- German Cancer Research Center(DE)
- University Hospital Heidelberg(DE)
- Heidelberg University(DE)
- European Monitoring Centre for Drugs and Drug Addiction(PT)
- Alb Fils Kliniken(DE)
- Centre International de Recherche sur le Cancer(FR)
- Mayo Clinic in Arizona(US)
- Istituto di Ricovero e Cura a Carattere Scientifico San Raffaele
- Istituti di Ricovero e Cura a Carattere Scientifico(IT)
- Vita-Salute San Raffaele University(IT)
- University of Modena and Reggio Emilia(IT)
- Akdeniz University(TR)