Comment on ‘Association of Computed Tomography‐Derived Body Composition and Complications After Colorectal Cancer Surgery: A Systematic Review and Meta‐Analysis’ by Van Helsdingen et al.

IF 8.9 1区 医学 Journal of Cachexia, Sarcopenia and Muscle Pub Date : 2024-12-23 DOI:10.1002/jcsm.13679
Rachana Mehta, Ashok Kumar Balaraman, Muhammed Shabil, Sanjit Sah
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Abstract

We read with great interest the article titled ‘Association of computed tomography-derived body composition and complications after colorectal cancer surgery A systematic review and meta-analysis’ and commend the authors for their rigorous and insightful systematic review and meta-analysis on body composition measurements using computed tomography (CT) scans as predictors of complications following colorectal cancer surgery [1]. This research addresses a highly relevant clinical issue, providing valuable information to guide surgical decision-making. While the article provides important findings, we believe there are some additional aspects that could further strengthen its impact and provide readers with an even more comprehensive understanding.

First, although the authors conducted a thorough risk of bias assessment using the QUIPS tool, the article does not mention whether a sensitivity analysis was performed based on study quality. We suggest conducting such an analysis to examine how excluding lower-quality studies (e.g., those rated as having a high risk of bias) may impact the pooled results. Sensitivity analysis could help readers better appreciate the robustness of the findings and determine whether the conclusions are consistent across studies with varying levels of methodological rigour [2].

Second, the certainty of evidence presented in this study could have been evaluated using the GRADE (Grading of Recommendations, Assessment, Development, and Evaluation) framework. GRADE is widely recognized for systematically assessing the quality of evidence and the strength of recommendations in health care research. Including a GRADE assessment would allow the readers to understand the confidence in the results across different outcomes, especially given the variability in CT measurement methods and clinical endpoints considered in the studies [3]. This would also facilitate the translation of evidence into clinical practice by offering clarity on the reliability of the conclusions.

Third, while the authors rightfully address the risk of publication bias in the discussion, we recommend the inclusion of formal statistical methods to assess this risk. A funnel plot or DOI plot, alongside statistical tests such as Egger's regression or the trim-and-fill method, could provide more concrete evidence of the presence or absence of publication bias [4]. These methods would further substantiate the robustness of the meta-analytic findings by ensuring that the results were not disproportionately influenced by small or positive-result studies.

Furthermore, it might be valuable to explore subgroup analyses based on factors such as the specific CT measurement (e.g., visceral fat vs. sarcopenia), patient age, or cancer stage. These analyses could uncover potential variations in predictive utility across different patient populations, making the results more clinically actionable. We encourage the authors to consider the evolving landscape of artificial intelligence (AI) and machine learning in CT image analysis. Including a discussion on how future research could incorporate AI-based methods for body composition analysis could enhance the clinical utility of these measurements by providing more precise and automated predictors of post-surgical outcomes.

We congratulate the authors for their valuable contribution to the field. By incorporating sensitivity analysis based on study quality, GRADE assessments, publication bias evaluations, and further exploration of AI-based predictive models, future work could offer even greater insights. We appreciate the opportunity to comment on this important study and look forward to future research in this area.

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Van Helsdingen等人对“结直肠癌手术后计算机断层扫描衍生的身体成分与并发症的关联:一项系统综述和荟萃分析”的评论。
我们饶有兴趣地阅读了题为“计算机断层扫描衍生的身体成分与结直肠癌手术后并发症的关联:系统回顾和荟萃分析”的文章,并赞扬作者对使用计算机断层扫描(CT)测量的身体成分作为结直肠癌手术后并发症的预测指标进行了严格而有见地的系统回顾和荟萃分析[1]。本研究解决了一个高度相关的临床问题,为指导手术决策提供了有价值的信息。虽然这篇文章提供了重要的发现,但我们认为还有一些其他方面可以进一步加强它的影响,并为读者提供更全面的理解。首先,尽管作者使用QUIPS工具进行了彻底的偏倚风险评估,但文章并未提及是否根据研究质量进行了敏感性分析。我们建议进行这样的分析,以检查排除低质量的研究(例如,那些被评为具有高偏倚风险的研究)可能如何影响汇总结果。敏感性分析可以帮助读者更好地理解研究结果的稳健性,并确定结论是否在不同方法学严谨程度的研究中一致。其次,本研究中提出的证据的确定性可以使用GRADE(建议、评估、发展和评估的分级)框架进行评估。GRADE在系统地评估证据质量和卫生保健研究建议的强度方面得到广泛认可。包括GRADE评估可以让读者理解不同结果的可信度,特别是考虑到CT测量方法和研究中考虑的临床终点的可变性[10]。通过明确结论的可靠性,这也将有助于将证据转化为临床实践。第三,虽然作者在讨论中正确地提到了发表偏倚的风险,但我们建议纳入正式的统计方法来评估这种风险。漏斗图或DOI图与统计检验(如Egger’s regression或trim-and-fill method)一起,可以提供更具体的证据,证明是否存在发表偏倚[4]。这些方法将进一步证实荟萃分析结果的稳健性,确保结果不会不成比例地受到小型或阳性结果研究的影响。此外,基于特定CT测量(例如,内脏脂肪与肌肉减少症)、患者年龄或癌症分期等因素进行亚组分析可能是有价值的。这些分析可以揭示不同患者群体预测效用的潜在变化,使结果更具临床可操作性。我们鼓励作者考虑CT图像分析中人工智能(AI)和机器学习的发展前景。包括关于未来研究如何结合基于人工智能的身体成分分析方法的讨论,通过提供更精确和自动化的手术后结果预测,可以增强这些测量的临床实用性。我们祝贺作者对这一领域的宝贵贡献。通过结合基于研究质量的敏感性分析、GRADE评估、发表偏倚评估,以及对基于人工智能的预测模型的进一步探索,未来的工作可能会提供更深入的见解。我们很高兴有机会对这项重要的研究发表评论,并期待未来在这一领域的研究。
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来源期刊
Journal of Cachexia, Sarcopenia and Muscle
Journal of Cachexia, Sarcopenia and Muscle Medicine-Orthopedics and Sports Medicine
自引率
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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.
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