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Multivariate linear regression modelling of lung weight in 24,056 Swedish medico-legal autopsy cases
Affiliation:1. Section of Forensic Medicine, Department of Community Medicine and Rehabilitation, P.O. Box 7616, Umeå University, SE-907 12 Umeå, Sweden;2. Unit for Forensic Medicine, Department of Clinical Sciences, Lund University, SE-223 62 Lund, Sweden;3. Department of Forensic Medicine in Umeå, The National Board of Forensic Medicine, Analysvägen 1, SE-907 12 Umeå, Sweden;4. Department of Forensic Medicine in Lund, The National Board of Forensic Medicine, Sölvegatan 25, SE-223 62 Lund, Sweden;1. Division of General Pediatrics, The Children''s Hospital of Philadelphia, Philadelphia, Pa;2. Center for Pediatric Clinical Effectiveness, The Children''s Hospital of Philadelphia, Philadelphia, Pa;3. PolicyLab, The Children''s Hospital of Philadelphia, Philadelphia, PA;4. Department of Emergency Medicine and Injury Prevention Center, Alpert Medical School of Brown University and Hasbro Children''s Hospital, Providence, RI;5. Department of Biostatistics and Epidemiology, University of Pennsylvania, Philadelphia, Pa;6. Department of Pediatrics, Perelman School of Medicine at the University of Pennsylvania, Philadelphia, Pa;1. Department of Pediatrics, Juntendo University Faculty of Medicine, Japan;2. Department of Pediatrics, Juntendo Urayasu Hospital, Japan
Abstract:Heavy combined lung weight at autopsy is a non-specific autopsy finding associated with certain causes of death such as intoxication. There is however no clear definition of what constitutes “heavy” lung weight. Different reference values have been suggested but previous studies have been limited by small select populations and only univariate regression has been attempted. The aim of this study was to create a model to estimate lung weight from decedent parameters. We identified all cases >18 years age autopsied at the Swedish National Board of Forensic Medicine from 2000 through 2013, excluding cases with a post-mortem interval >5 days as well as cases with extreme values, totalling 24,056 cases. We analysed body weight, body height, sex, age, BMI, BSA as well as untransformed and transformed lung weight. The analysis was stratified for sex. We evaluated the fit of the models and that the model assumptions were not violated. We set out to apply the model with the highest residual sum of squares to derive limits for heavy lungs. In univariate regression BSA and height showed best performance. The final model included height, weight and age group. After excluding large standardized residuals (>3, <−3) the final model achieved R2 of 0.132 and 0.106 for women and men respectively. While we managed to create a multivariate model its performance was poor, possibly a fact reflective of the physiological nature of the lungs and in turn its variability in fluid content. Linear regression is a poor model for estimating lung weight in an unselected population.
Keywords:Lungs  Autopsy  Weight  Linear regression
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