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人工智能增强分析揭示母体糖尿病对无生长改变胎儿皮下脂肪量的影响。

AI-Enhanced Analysis Reveals Impact of Maternal Diabetes on Subcutaneous Fat Mass in Fetuses without Growth Alterations.

作者信息

Borboa-Olivares Hector, Torres-Torres Johnatan, Flores-Pliego Arturo, Espejel-Nuñez Aurora, Camacho-Arroyo Ignacio, Guzman-Huerta Mario, Perichart-Perera Otilia, Piña-Ramirez Omar, Estrada-Gutierrez Guadalupe

机构信息

Community Interventions Research Branch, Instituto Nacional de Perinatología, Mexico City 11000, Mexico.

Clinical Research Division, Instituto Nacional de Perinatología, Mexico City 11000, Mexico.

出版信息

J Clin Med. 2023 Oct 12;12(20):6485. doi: 10.3390/jcm12206485.

Abstract

Pregnant women with diabetes often present impaired fetal growth, which is less common if maternal diabetes is well-controlled. However, developing strategies to estimate fetal body composition beyond fetal growth that could better predict metabolic complications later in life is essential. This study aimed to evaluate subcutaneous fat tissue (femur and humerus) in fetuses with normal growth among pregnant women with well-controlled diabetes using a reproducible 3D-ultrasound tool and offline TUI (Tomographic Ultrasound Imaging) analysis. Additionally, three artificial intelligence classifier models were trained and validated to assess the clinical utility of the fetal subcutaneous fat measurement. A significantly larger subcutaneous fat area was found in three-femur and two-humerus selected segments of fetuses from women with diabetes compared to the healthy pregnant control group. The full classifier model that includes subcutaneous fat measure, gestational age, fetal weight, fetal abdominal circumference, maternal body mass index, and fetal weight percentile as variables, showed the best performance, with a detection rate of 70%, considering a false positive rate of 10%, and a positive predictive value of 82%. These findings provide valuable insights into the impact of maternal diabetes on fetal subcutaneous fat tissue as a variable independent of fetal growth.

摘要

患有糖尿病的孕妇常常出现胎儿生长受限的情况,若母体糖尿病得到良好控制,这种情况则较为少见。然而,制定超越胎儿生长来估计胎儿身体成分的策略,以便更好地预测日后生活中的代谢并发症至关重要。本研究旨在使用可重复的三维超声工具和离线断层超声成像(TUI)分析,评估糖尿病得到良好控制的孕妇中生长正常胎儿的皮下脂肪组织(股骨和肱骨)。此外,还训练并验证了三种人工智能分类器模型,以评估胎儿皮下脂肪测量的临床效用。与健康孕妇对照组相比,糖尿病孕妇胎儿的股骨三段和肱骨两段选定节段的皮下脂肪面积明显更大。以皮下脂肪测量值、孕周、胎儿体重、胎儿腹围、母体体重指数和胎儿体重百分位数作为变量的完整分类器模型表现最佳,在假阳性率为10%的情况下,检测率为70%,阳性预测值为82%。这些发现为母体糖尿病对作为独立于胎儿生长的变量的胎儿皮下脂肪组织的影响提供了有价值的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d5d0/10607577/ad675bc2bdec/jcm-12-06485-g001.jpg

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