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Digital transition in pathology lab: a survey from the Lombardy region
2
Zitationen
19
Autoren
2024
Jahr
Abstract
Objective: Digital pathology is an opportunity to revise the routine and old artisanal workflow, moving to standard operating procedures, quality control and reproducibility. Here the results of a survey promoted by the Coordinamento della Medicina di Laboratorio (CRC Med Lab) of the Lombardy region in Italy are reported to shed light on the current situation of digital adoption in the country. Methods: The survey composed of 58 questions was sent to 60 pathology laboratories. The results were collected and most significant answers were reported and discussed. Results: Answers were received from 57 (95%) laboratories, a minority organized in spoke-hub networks (16%) with a centralized processing phase (11%). Hybrid manual/computer-assisted traceability was prevalent (36%), with QR/barcode labeling starting within the pathology lab (23%). Different laboratory information systems (LIS) were employed, mostly with alert functions and/or multimedial file attachments (56% and 46%, respectively). The majority opted for a semi-automated tracking management (44, 77%) and 18 centers (32%) were partly digitizing the routine (¾ scanning < 25% of slides). Whole slide images were retained for 3.7 years in average; in-house blocks/slides archiving was still preferred (30, 53%), with 1838 (±1551) and 1798 (±1950) days (5 years) internal permanence for blocks and slides that are stored in out-source (mean turnaround time for return on-demand 3.7±2.1, range 1-10 days). Conclusions: The advantages of digital pathology must be balanced against the challenges faced in the structural revision of the pathology workflow. This regional scouting can represent the foundation to build an efficient and connected digital pathology system in the territory.
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Autoren
Institutionen
- University of Milano-Bicocca(IT)
- Azienda Socio Sanitaria Territoriale Grande Ospedale Metropolitano Niguarda(IT)
- Azienda Ospedaliera di Desio e Vimercate(IT)
- University of Insubria(IT)
- Azienda Ospedaliera Treviglio(IT)
- Azienda Socio Sanitaria Territoriale di Bergamo Ovest
- Alessandro Manzoni Hospital(IT)
- Azienda Socio Sanitaria Territoriale della Valtellina e Alto Lario(IT)
- Fondazione IRCCS Ca' Granda Ospedale Maggiore Policlinico(IT)
- Azienda Socio Sanitaria Territoriale degli Spedali Civili di Brescia(IT)
- Ospedale Papa Giovanni XXIII(IT)
- AOL (United States)(US)
- University of Milan(IT)
- Ospedale San Paolo(IT)
- ASST Melegnano e della Martesana(IT)
- Fondazione IRCCS Istituto Nazionale dei Tumori(IT)
- ASST Fatebenefratelli Sacco(IT)
- University of Pavia(IT)