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      Much work remains to reach consensus on musculoskeletal injury risk in military service members: A systematic review with meta-analysis

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          Assessing heterogeneity in meta-analysis: Q statistic or I2 index?

          In meta-analysis, the usual way of assessing whether a set of single studies is homogeneous is by means of the Q test. However, the Q test only informs meta-analysts about the presence versus the absence of heterogeneity, but it does not report on the extent of such heterogeneity. Recently, the I(2) index has been proposed to quantify the degree of heterogeneity in a meta-analysis. In this article, the performances of the Q test and the confidence interval around the I(2) index are compared by means of a Monte Carlo simulation. The results show the utility of the I(2) index as a complement to the Q test, although it has the same problems of power with a small number of studies.
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            Transparent Reporting of a multivariable prediction model for Individual Prognosis or Diagnosis (TRIPOD): the TRIPOD statement.

            Prediction models are developed to aid health care providers in estimating the probability or risk that a specific disease or condition is present (diagnostic models) or that a specific event will occur in the future (prognostic models), to inform their decision making. However, the overwhelming evidence shows that the quality of reporting of prediction model studies is poor. Only with full and clear reporting of information on all aspects of a prediction model can risk of bias and potential usefulness of prediction models be adequately assessed. The Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (TRIPOD) Initiative developed a set of recommendations for the reporting of studies developing, validating, or updating a prediction model, whether for diagnostic or prognostic purposes. This article describes how the TRIPOD Statement was developed. An extensive list of items based on a review of the literature was created, which was reduced after a Web-based survey and revised during a 3-day meeting in June 2011 with methodologists, health care professionals, and journal editors. The list was refined during several meetings of the steering group and in e-mail discussions with the wider group of TRIPOD contributors. The resulting TRIPOD Statement is a checklist of 22 items, deemed essential for transparent reporting of a prediction model study. The TRIPOD Statement aims to improve the transparency of the reporting of a prediction model study regardless of the study methods used. The TRIPOD Statement is best used in conjunction with the TRIPOD explanation and elaboration document. To aid the editorial process and readers of prediction model studies, it is recommended that authors include a completed checklist in their submission (also available at www.tripod-statement.org).
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              PROBAST: A Tool to Assess the Risk of Bias and Applicability of Prediction Model Studies

              Clinical prediction models combine multiple predictors to estimate risk for the presence of a particular condition (diagnostic models) or the occurrence of a certain event in the future (prognostic models). PROBAST (Prediction model Risk Of Bias ASsessment Tool), a tool for assessing the risk of bias (ROB) and applicability of diagnostic and prognostic prediction model studies, was developed by a steering group that considered existing ROB tools and reporting guidelines. The tool was informed by a Delphi procedure involving 38 experts and was refined through piloting. PROBAST is organized into the following 4 domains: participants, predictors, outcome, and analysis. These domains contain a total of 20 signaling questions to facilitate structured judgment of ROB, which was defined to occur when shortcomings in study design, conduct, or analysis lead to systematically distorted estimates of model predictive performance. PROBAST enables a focused and transparent approach to assessing the ROB and applicability of studies that develop, validate, or update prediction models for individualized predictions. Although PROBAST was designed for systematic reviews, it can be used more generally in critical appraisal of prediction model studies. Potential users include organizations supporting decision making, researchers and clinicians who are interested in evidence-based medicine or involved in guideline development, journal editors, and manuscript reviewers.
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                Author and article information

                Contributors
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                Journal
                European Journal of Sport Science
                European Journal of Sport Science
                Informa UK Limited
                1746-1391
                1536-7290
                January 02 2022
                June 18 2021
                January 02 2022
                : 22
                : 1
                : 16-34
                Affiliations
                [1 ]Military Performance Division, United States Army Research Institute of Environmental Medicine (USARIEM), Natick, MA, USA
                [2 ]Department of Rehab Medicine, Uniformed Services University of Health Sciences, Bethesda, MD, USA
                [3 ]Physical Performance Service Line, G 3/5/7, U.S. Army Office of the Surgeon General, Falls Church, VA, USA
                [4 ]Military Academy Karlberg, Swedish Armed Forces, Solna, Sweden
                [5 ]Department of Neurobiology, Care Sciences and Society, Division of Physiotherapy, Karolinska Institutet, Huddinge, Sweden
                [6 ]School of Education, Health and Social Studies, Dalarna University, Falun, Sweden
                [7 ]Human Performance Support Group, U.S. Air Force Special Warfare Training Wing, Joint Base San Antonio-Lackland, San Antonio, TX, USA
                [8 ]University of Canberra, Research Institute for Sport and Exercise, Canberra, Australia
                Article
                10.1080/17461391.2021.1931464
                33993835
                ad993dd1-a69c-4c2e-acbf-d53378cf936b
                © 2022
                History

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