Suppr超能文献

预测脊髓性肌萎缩症 I 型儿童脂肪量的方程:开发与内部验证。

Predictive fat mass equations for spinal muscular atrophy type I children: Development and internal validation.

机构信息

International Center for the Assessment of Nutritional Status (ICANS), Department of Food Environmental and Nutritional Sciences (DeFENS), University of Milan, Milan, Italy.

International Center for the Assessment of Nutritional Status (ICANS), Department of Food Environmental and Nutritional Sciences (DeFENS), University of Milan, Milan, Italy.

出版信息

Clin Nutr. 2021 Apr;40(4):1578-1587. doi: 10.1016/j.clnu.2021.02.026. Epub 2021 Feb 26.

Abstract

BACKGROUND

Body composition assessment is paramount for spinal muscular atrophy type I (SMA I) patients, as weight and BMI have proven to be misleading for these patients. Despite its importance, no disease-specific field method is currently available, and the assessment of body composition of SMA I patients requires reference methods available only in specialized settings.

OBJECTIVE

To develop predictive fat mass equations for SMA I children based on simple measurements, and compare existing equations to the new disease-specific equations.

DESIGN

Demographic, clinical and anthropometric data were examined as potential predictors of the best candidate response variable and non-linear relations were taken into account by transforming continuous predictors with restricted cubic splines. Alternative models were fitted including all the dimensions revealed by cluster analysis of the predictors. The best models were then internally validated, quantifying optimism of the obtained performance measures. The contribution of nusinersen treatment to the unexplained variability of the final models was also tested.

RESULTS

A total of 153 SMA I patients were included in the study, as part of a longitudinal observational study in SMA children conducted at the International Center for the Assessment of Nutritional Status (ICANS), University of Milan. The sample equally represented both sexes (56% females) and a wide age range (from 3 months to 12 years, median 1.2 years). Four alternative models performed equally in predicting fat mass fraction (fat mass/body weight). The most convenient was selected and further presented. The selected model uses as predictors sex, age, calf circumference and the sum of triceps, suprailiac and calf skinfold thicknesses. The model showed high predictive ability (optimism corrected coefficient of determination, R = 0.72) and internal validation indicated little optimism both in performance measures and model calibration. The addition of nusinersen as a predictor variable did not improve the prediction. The disease-specific equation was more accurate than the available fat mass equations.

CONCLUSIONS

The developed prediction model allows the assessment of body composition in SMA I children with simple and widely available measures and with reasonable accuracy.

摘要

背景

对于脊髓性肌萎缩症 I 型(SMA I)患者,身体成分评估至关重要,因为体重和 BMI 已被证明对这些患者具有误导性。尽管其重要性不言而喻,但目前尚无特定于疾病的现场方法,并且需要在专门的环境中才能获得评估 SMA I 患者身体成分的参考方法。

目的

基于简单的测量值为 SMA I 儿童开发预测脂肪量方程式,并将现有的方程式与新的疾病特异性方程式进行比较。

设计

检查人口统计学、临床和人体测量学数据,以确定最佳候选反应变量的潜在预测指标,并通过对受限立方样条进行转换来考虑连续预测指标的非线性关系。包括聚类分析中揭示的所有预测指标的替代模型。然后对最佳模型进行内部验证,量化所获得性能指标的乐观程度。还测试了 nusinersen 治疗对最终模型中未解释变异性的贡献。

结果

共有 153 名 SMA I 患者参与了这项研究,作为在米兰大学国际营养评估中心(ICANS)进行的 SMA 儿童纵向观察研究的一部分。该样本在性别(56%为女性)和年龄范围(3 个月至 12 岁,中位数为 1.2 岁)上均具有代表性。有四个替代模型在预测脂肪分数(脂肪量/体重)方面表现相同。选择了最方便的模型并进一步介绍。所选模型使用性别、年龄、小腿围度以及三头肌、髂嵴和小腿皮褶厚度之和作为预测指标。该模型具有较高的预测能力(校正后的决定系数,R=0.72),内部验证表明,在性能指标和模型校准方面,都存在较小的乐观性。将 nusinersen 作为预测变量添加并不会改善预测。疾病特异性方程比现有的脂肪量方程更准确。

结论

该开发的预测模型允许使用简单且广泛可用的措施对 SMA I 儿童进行身体成分评估,并且具有合理的准确性。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验