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- Title
Workload measurement for molecular genetics laboratory: A survey study.
- Authors
Tagliafico, Enrico; Bernardis, Isabella; Grasso, Marina; D’Apice, Maria Rosaria; Lapucci, Cristina; Botta, Annalisa; Giachino, Daniela Francesca; Marinelli, Maria; Primignani, Paola; Russo, Silvia; Sani, Ilaria; Seia, Manuela; Fini, Sergio; Rimessi, Paola; Tenedini, Elena; Ravani, Anna; Genuardi, Maurizio; Ferlini, Alessandra; null, null
- Abstract
Genetic testing availability in the health care system is rapidly increasing, along with the diffusion of next-generation sequencing (NGS) into diagnostics. These issues make imperative the knowledge-drive optimization of testing in the clinical setting. Time estimations of wet laboratory procedure in Italian molecular laboratories offering genetic diagnosis were evaluated to provide data suitable to adjust efficiency and optimize health policies and costs. A survey was undertaken by the Italian Society of Human Genetics (SIGU). Forty-two laboratories participated. For most molecular techniques, the most time-consuming steps are those requiring an intensive manual intervention or in which the human bias can affect the global process time-performances. For NGS, for which the study surveyed also the interpretation time, the latter represented the step that requiring longer times. We report the first survey describing the hands-on times requested for different molecular diagnostics procedures, including NGS. The analysis of this survey suggests the need of some improvements to optimize some analytical processes, such as the implementation of laboratory information management systems to minimize manual procedures in pre-analytical steps which may affect accuracy that represents the major challenge to be faced in the future setting of molecular genetics laboratory.
- Subjects
EMPLOYEES' workload; MOLECULAR genetics; HEALTH policy; GENETIC disorder diagnosis; MATHEMATICAL optimization
- Publication
PLoS ONE, 2018, Vol 13, Issue 11, p1
- ISSN
1932-6203
- Publication type
Article
- DOI
10.1371/journal.pone.0206855