Reference intervals are an essential tool for the clinical interpretation of laboratory test results. Traditionally, these interval are determined using samples from healthy individuals, a process that is resource-intensive, time-consuming, and require the active recruitment of healthy volunteers. In recent years, due to the increasing availability of electronic health record (EHR) databases and the growing number of laboratory tests, it is possible to determine the reference intervals indirectly. This approach relies on the analysis of routine data acquired in clinical laboratories, eliminating the need for active recruiting healthy subjects and significantly reducing costs. Moreover, the method has the potential to eliminate the selection bias of an ultra-healthy population typical of the direct methods. The indirect methods for determining reference intervals have evolved from simple strategies of isolating the healthy population using sample metadata, to sophisticated statistical models that effectively distinguish normal from pathological distributions. One of the advanced techniques, RefineR, has reached an excellent combination of accuracy, robustness, and computational efficiency, outperforming previous methods. It has been implemented as an open-source R package, facilitating its application in real-world settings. In recognition of these advantages, the IFCC (International Federation of Clinical Chemistry and Laboratory Medicine), through its Committee on Reference Intervals and Decision Limits (C-RIDL), has promoted the adoption of indirect methods for determining reference intervals, highlighting the advantages of this strategy, including greater speed, lower costs, and the absence of a need to recruit healthy donors. Furthermore, a recent study has highlighted age-related physiological variations in hemoglobin levels in elderly population. This underscores the need for defining age-specific reference intervals which are currently absent from most laboratory reports, potentially impacting diagnostic accuracy.
Study Type
OBSERVATIONAL
Enrollment
1,000,000
ASL Bari, Ospedale della Murgia, Altamura
Altamura, Altamura, Italy
NOT_YET_RECRUITINGAzienda Ospedaliero-Universitaria Ospedali Riuniti di Ancona
Ancona, Ancona, Italy
NOT_YET_RECRUITINGAzienda USL Toscana Sud Est, Arezzo
Arezzo, Arezzo, Italy
NOT_YET_RECRUITINGAzienda ULSS 1 Dolomiti
Belluno, Belluno, Italy
NOT_YET_RECRUITINGDefine indirect reference intervals for complete blood count (CBC) parameters by analyzing large-scale retrospective routine laboratory data.
Time frame: up to 3 years
Assess regional differences by comparing results across 10 Italian regions.
Statistical heterogeneity will be assessed using Cochran's Q test, and I squared index
Time frame: up to 3 years
Establish age- and sex-specific reference intervals
Time frame: up to 3 years
Evaluate inter-instrument variations by considering results obtained from different analytical platforms.
Statistical heterogeneity will be assessed using Cochran's Q test, and I squared index
Time frame: up to 3 years
This platform is for informational purposes only and does not constitute medical advice. Always consult a qualified healthcare professional.
Azienda Ospedaliero-Universitaria Careggi, Firenze
Florence, Firenze, Italy
NOT_YET_RECRUITINGIRCCS Istituto Clinico Humanitas, Milano
Milan, Milano, Italy
NOT_YET_RECRUITINGIRCCS Ospedale San Raffaele, Milano
Milan, Milano, Italy
NOT_YET_RECRUITINGAzienda Ospedaliero-Universitaria di Modena
Modena, Modena, Italy
NOT_YET_RECRUITINGBianalisi Carate Brianza, Monza e Brianza
Monza, Monza, Italy
NOT_YET_RECRUITINGAzienda Ospedaliero-Universitaria Maggiore della Carità di Novara
Novara, Novara, Italy
NOT_YET_RECRUITING...and 14 more locations