{"title":"对 Liu 等人撰写的 \"体育锻炼的变化及其与肾功能衰退的关系:基于英国生物库的队列研究 \"的评论。","authors":"Zhenzhi Qin, Yan Xu","doi":"10.1002/jcsm.13623","DOIUrl":null,"url":null,"abstract":"<p>We read with great interest the recent article by Welsh et al. titled ‘Change in physical activity and its association with decline in kidney function: A UK Biobank-based cohort study’ in <i>Journal of Cachexia, Sarcopenia and Muscle</i> [<span>1</span>]. The study finds that increased physical activity may protect kidney function, as suggested by the modest yet significant associations observed in large-scale analyses using eGFRCysC measurements. However, we note several biases in the use of the Cox proportional hazards (CoxPH) model that the authors did not address.</p>\n<p>The established criteria may result in mixed censoring outcomes, that is, right-censoring and interval-censoring events [<span>2, 3</span>]. Events of kidney function diagnosed through medical records could result in interval-censoring if they occurred between follow-up visits, and right-censoring for diagnosed between the end of follow-up and the time of data analysis. The CoxPH model primarily handles right-censored data. In contrast, the accelerated failure time (AFT) model is often preferred for scenarios involving various types of censored data [<span>4</span>]. The AFT model can effectively handle left-censored, right-censored and interval-censored data by appropriately adjusting the likelihood function [<span>5</span>]. By using the ‘survival’ and ‘icenReg’ packages, mixed censored data can be fitted and analysed, and event times can be estimated [<span>6</span>].</p>\n<p>Moreover, the CoxPH model requires the proportional hazards assumption, meaning that covariate effects are constant over time [<span>7</span>]. If this assumption is violated, the model may not provide unbiased estimates of the coefficients, and the predictions may not be reliable. The authors should utilize Schoenfeld residuals or alternative methods to evaluate the proportional hazards assumption for the association between covariates and the risk of kidney function. Schoenfeld residuals are calculated as the differences between the observed and expected values of covariates at each failure time [<span>8</span>]. If the residuals exhibit a systematic change over time, it suggests that the effect of the covariate may be time-dependent. When the proportional hazards assumption does not hold, authors should use a stratified Cox model, a Cox model with time-varying effects, or an AFT model instead of the standard CoxPH model [<span>4, 9</span>].</p>\n<p>In conclusion, we believe that a re-evaluation considering the potential impact of censoring events and the proportional hazards assumption is necessary. Further research is anticipated to provide more empirical data and clearer insights into this field.</p>","PeriodicalId":186,"journal":{"name":"Journal of Cachexia, Sarcopenia and Muscle","volume":"108 1","pages":""},"PeriodicalIF":8.9000,"publicationDate":"2024-10-21","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Comment on ‘Change in Physical Activity and Its Association With Decline in Kidney Function: A UK Biobank-Based Cohort Study’ by Liu et al.\",\"authors\":\"Zhenzhi Qin, Yan Xu\",\"doi\":\"10.1002/jcsm.13623\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>We read with great interest the recent article by Welsh et al. titled ‘Change in physical activity and its association with decline in kidney function: A UK Biobank-based cohort study’ in <i>Journal of Cachexia, Sarcopenia and Muscle</i> [<span>1</span>]. The study finds that increased physical activity may protect kidney function, as suggested by the modest yet significant associations observed in large-scale analyses using eGFRCysC measurements. However, we note several biases in the use of the Cox proportional hazards (CoxPH) model that the authors did not address.</p>\\n<p>The established criteria may result in mixed censoring outcomes, that is, right-censoring and interval-censoring events [<span>2, 3</span>]. Events of kidney function diagnosed through medical records could result in interval-censoring if they occurred between follow-up visits, and right-censoring for diagnosed between the end of follow-up and the time of data analysis. The CoxPH model primarily handles right-censored data. In contrast, the accelerated failure time (AFT) model is often preferred for scenarios involving various types of censored data [<span>4</span>]. The AFT model can effectively handle left-censored, right-censored and interval-censored data by appropriately adjusting the likelihood function [<span>5</span>]. By using the ‘survival’ and ‘icenReg’ packages, mixed censored data can be fitted and analysed, and event times can be estimated [<span>6</span>].</p>\\n<p>Moreover, the CoxPH model requires the proportional hazards assumption, meaning that covariate effects are constant over time [<span>7</span>]. If this assumption is violated, the model may not provide unbiased estimates of the coefficients, and the predictions may not be reliable. The authors should utilize Schoenfeld residuals or alternative methods to evaluate the proportional hazards assumption for the association between covariates and the risk of kidney function. Schoenfeld residuals are calculated as the differences between the observed and expected values of covariates at each failure time [<span>8</span>]. If the residuals exhibit a systematic change over time, it suggests that the effect of the covariate may be time-dependent. When the proportional hazards assumption does not hold, authors should use a stratified Cox model, a Cox model with time-varying effects, or an AFT model instead of the standard CoxPH model [<span>4, 9</span>].</p>\\n<p>In conclusion, we believe that a re-evaluation considering the potential impact of censoring events and the proportional hazards assumption is necessary. 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Comment on ‘Change in Physical Activity and Its Association With Decline in Kidney Function: A UK Biobank-Based Cohort Study’ by Liu et al.
We read with great interest the recent article by Welsh et al. titled ‘Change in physical activity and its association with decline in kidney function: A UK Biobank-based cohort study’ in Journal of Cachexia, Sarcopenia and Muscle [1]. The study finds that increased physical activity may protect kidney function, as suggested by the modest yet significant associations observed in large-scale analyses using eGFRCysC measurements. However, we note several biases in the use of the Cox proportional hazards (CoxPH) model that the authors did not address.
The established criteria may result in mixed censoring outcomes, that is, right-censoring and interval-censoring events [2, 3]. Events of kidney function diagnosed through medical records could result in interval-censoring if they occurred between follow-up visits, and right-censoring for diagnosed between the end of follow-up and the time of data analysis. The CoxPH model primarily handles right-censored data. In contrast, the accelerated failure time (AFT) model is often preferred for scenarios involving various types of censored data [4]. The AFT model can effectively handle left-censored, right-censored and interval-censored data by appropriately adjusting the likelihood function [5]. By using the ‘survival’ and ‘icenReg’ packages, mixed censored data can be fitted and analysed, and event times can be estimated [6].
Moreover, the CoxPH model requires the proportional hazards assumption, meaning that covariate effects are constant over time [7]. If this assumption is violated, the model may not provide unbiased estimates of the coefficients, and the predictions may not be reliable. The authors should utilize Schoenfeld residuals or alternative methods to evaluate the proportional hazards assumption for the association between covariates and the risk of kidney function. Schoenfeld residuals are calculated as the differences between the observed and expected values of covariates at each failure time [8]. If the residuals exhibit a systematic change over time, it suggests that the effect of the covariate may be time-dependent. When the proportional hazards assumption does not hold, authors should use a stratified Cox model, a Cox model with time-varying effects, or an AFT model instead of the standard CoxPH model [4, 9].
In conclusion, we believe that a re-evaluation considering the potential impact of censoring events and the proportional hazards assumption is necessary. Further research is anticipated to provide more empirical data and clearer insights into this field.
期刊介绍:
The Journal of Cachexia, Sarcopenia, and Muscle is a prestigious, peer-reviewed international publication committed to disseminating research and clinical insights pertaining to cachexia, sarcopenia, body composition, and the physiological and pathophysiological alterations occurring throughout the lifespan and in various illnesses across the spectrum of life sciences. This journal serves as a valuable resource for physicians, biochemists, biologists, dieticians, pharmacologists, and students alike.