Comment on: “Prevalence and Influencing Factors of Malnutrition in Diabetic Patients: A Systematic Review and Meta-Analysis”

IF 3 2区 医学 Q2 ENDOCRINOLOGY & METABOLISM
Shubham Kumar, Nosaibah Razaqi, Rachana Mehta, Ranjana Sah
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This statistical approach would have provided a deeper understanding of the heterogeneity and potentially improved the robustness of their conclusions.</p><p>Additionally, the authors relied on confidence intervals (CIs) to present pooled estimates but did not include prediction intervals (PIs). While CIs describe the precision of the pooled effect size, PIs would have conveyed the range of effects expected in future studies. The use of PIs is especially critical in the presence of high heterogeneity, as it offers a clearer picture of the variability across different settings and populations [<span>3</span>]. The inclusion of PIs alongside CIs would have strengthened the interpretation of the meta-analysis results, particularly for clinical decision-making.</p><p>Another important methodological concern involves the assessment of publication bias. The authors used Egger's test and visual inspection of funnel plots to evaluate publication bias. 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引用次数: 0

Abstract

We read with great interest the recent article by Zhang et al., titled “Prevalence and influencing factors of malnutrition in diabetic patients: A systematic review and meta-analysis” [1]. The study provides valuable insights into an important area of clinical nutrition. The authors should be commended for their effort in consolidating data on malnutrition in diabetic patients and highlighting its associated risk factors. However, upon a detailed review of the article, several methodological issues and potential areas for improvement were identified, which could enhance the reliability and clinical applicability of their findings.

One significant limitation lies in the presence of substantial heterogeneity across the included studies, as evidenced by high I2 values (> 90%). The heterogeneity raises concerns regarding the comparability of pooled prevalence estimates for malnutrition and at-risk malnutrition, which the authors reported as 33% and 44%, respectively. Although the authors performed subgroup analyses by measurement tools, region, and diabetes complications, these analyses did not fully address the underlying causes of variability. The authors could have considered using meta-regression analysis to explore potential sources of heterogeneity, such as differences in study design, sample characteristics, and diagnostic criteria [2]. This statistical approach would have provided a deeper understanding of the heterogeneity and potentially improved the robustness of their conclusions.

Additionally, the authors relied on confidence intervals (CIs) to present pooled estimates but did not include prediction intervals (PIs). While CIs describe the precision of the pooled effect size, PIs would have conveyed the range of effects expected in future studies. The use of PIs is especially critical in the presence of high heterogeneity, as it offers a clearer picture of the variability across different settings and populations [3]. The inclusion of PIs alongside CIs would have strengthened the interpretation of the meta-analysis results, particularly for clinical decision-making.

Another important methodological concern involves the assessment of publication bias. The authors used Egger's test and visual inspection of funnel plots to evaluate publication bias. While these methods are widely used, they may not be optimal for meta-analyses involving proportions, where asymmetry in funnel plots can arise from true heterogeneity rather than bias. The authors might have instead employed more appropriate approaches, such as the Doi plot and LFK index, which are specifically designed to assess publication bias in proportion meta-analyses [4]. These methods offer greater reliability in detecting bias in prevalence studies and could have provided additional assurance regarding the integrity of the findings.

The use of diverse diagnostic tools, such as the Mini Nutritional Assessment (MNA), Nutritional Risk Screening 2002 (NRS-2002), and Global Leadership Initiative on Malnutrition (GLIM), complicates result interpretation due to varying criteria and cut-off values, contributing to heterogeneity. While acknowledged, the authors could have stratified their analysis by individual tools rather than pooling data indiscriminately. Advocating for a standardized malnutrition assessment tool specific to diabetic patients would improve consistency and comparability.

The analysis of influencing factors was limited by small sample sizes for certain variables, such as smoking, education level, and diabetic foot infections, reducing reliability. Future meta-analyses should incorporate more studies or pool related data to enhance statistical power. Additionally, potential confounders, including socioeconomic status, dietary patterns, and psychological factors, were insufficiently addressed, despite their known influence on malnutrition risk in diabetics.

While the study by Zhang et al. is an important contribution to the field, addressing these concerns would provide greater clarity on this critical issue. The authors' efforts in this domain are appreciated, and we hope these suggestions will guide further advancements in the study of malnutrition in diabetic patients.

S.K., R.M., R.S., and N.R. critically provided comments on methodological aspects. S.K., N.R., and R.S. have written and edited the draft.

The authors have nothing to report.

The authors declare no conflicts of interest.

《糖尿病患者营养不良的患病率及影响因素:一项系统综述和荟萃分析》
我们饶有兴趣地阅读了Zhang等人最近发表的一篇文章,题为“糖尿病患者营养不良的患病率及其影响因素:一项系统回顾和荟萃分析”。这项研究为临床营养学的一个重要领域提供了有价值的见解。作者在整合糖尿病患者营养不良数据和强调其相关危险因素方面所做的努力应该受到赞扬。然而,通过对文章的详细回顾,我们发现了几个方法学上的问题和潜在的改进领域,这可以提高他们的研究结果的可靠性和临床适用性。一个重要的限制在于纳入的研究存在实质性的异质性,高I2值(> 90%)证明了这一点。这种异质性引起了人们对营养不良和高危营养不良综合患病率估计值的可比性的担忧,作者分别报告了33%和44%。虽然作者通过测量工具、地区和糖尿病并发症进行了亚组分析,但这些分析并没有完全解决变异的潜在原因。作者本可以考虑使用元回归分析来探索异质性的潜在来源,如研究设计、样本特征和诊断标准的差异。这种统计方法将提供对异质性的更深入的理解,并可能提高他们结论的稳健性。此外,作者依靠置信区间(ci)来提供汇总估计,但不包括预测区间(pi)。ci描述了汇总效应大小的精确度,而pi则传达了未来研究中预期的效应范围。在存在高度异质性的情况下,pi的使用尤其重要,因为它可以更清晰地显示不同环境和人群之间的可变性[10]。将pi与ci一起纳入将加强对meta分析结果的解释,特别是对临床决策的解释。另一个重要的方法学问题涉及对发表偏倚的评估。作者使用Egger检验和漏斗图的目视检验来评估发表偏倚。虽然这些方法被广泛使用,但它们可能不是涉及比例的元分析的最佳方法,因为漏斗图中的不对称可能来自真正的异质性,而不是偏差。作者本可以采用更合适的方法,如Doi图和LFK指数,它们专门用于评估比例荟萃分析中的发表偏倚。这些方法在检测流行病学研究中的偏倚方面提供了更高的可靠性,并且可以为研究结果的完整性提供额外的保证。各种诊断工具的使用,如迷你营养评估(MNA)、2002年营养风险筛查(NRS-2002)和营养不良全球领导倡议(GLIM),由于不同的标准和临界值,使结果解释复杂化,导致异质性。虽然承认,作者本可以通过个别工具分层分析,而不是不分青红皂白地汇集数据。倡导针对糖尿病患者的标准化营养不良评估工具将提高一致性和可比性。影响因素的分析受限于某些变量的小样本量,如吸烟、教育水平和糖尿病足感染,降低了可靠性。未来的荟萃分析应纳入更多的研究或汇集相关数据,以提高统计能力。此外,潜在的混杂因素,包括社会经济地位、饮食模式和心理因素,尽管它们对糖尿病患者营养不良风险有已知的影响,但没有得到充分的解决。虽然Zhang等人的研究是对该领域的重要贡献,但解决这些问题将使这一关键问题更加清晰。作者在这一领域的努力是值得赞赏的,我们希望这些建议能够指导糖尿病患者营养不良研究的进一步进展。r.m.、r.s.和N.R.对方法论方面提出了批判性的评论。s.k.、n.r.和R.S.撰写并编辑了草案。作者没有什么可报告的。作者声明无利益冲突。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Diabetes
Journal of Diabetes ENDOCRINOLOGY & METABOLISM-
CiteScore
6.50
自引率
2.20%
发文量
94
审稿时长
>12 weeks
期刊介绍: Journal of Diabetes (JDB) devotes itself to diabetes research, therapeutics, and education. It aims to involve researchers and practitioners in a dialogue between East and West via all aspects of epidemiology, etiology, pathogenesis, management, complications and prevention of diabetes, including the molecular, biochemical, and physiological aspects of diabetes. The Editorial team is international with a unique mix of Asian and Western participation. The Editors welcome submissions in form of original research articles, images, novel case reports and correspondence, and will solicit reviews, point-counterpoint, commentaries, editorials, news highlights, and educational content.
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