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基于超声图像的迁移学习深度模型对胎儿肺成熟度发育程度的定量评估初步研究。

A preliminary study to quantitatively evaluate the development of maturation degree for fetal lung based on transfer learning deep model from ultrasound images.

机构信息

Ultrasound Department, Shanghai First Maternity and Infant Hospital, Tongji University School of Medicine, Shanghai, 200040, China.

Department of Electronic Engineering, Fudan University, Shanghai, 200433, China.

出版信息

Int J Comput Assist Radiol Surg. 2020 Aug;15(8):1407-1415. doi: 10.1007/s11548-020-02211-1. Epub 2020 Jun 15.

Abstract

PURPOSE

The evaluation of fetal lung maturity is critical for clinical practice since the lung immaturity is an important cause of neonatal morbidity and mortality. For the evaluation of the development of fetal lung maturation degree, our study established a deep model from ultrasound images of four-cardiac-chamber view plane.

METHODS

A two-stage transfer learning approach is proposed for the purpose of the study. A specific U-net structure is designed for the applied deep model. In the first stage, the model is to first learn the recognition of fetal lung region in the ultrasound images. It is hypothesized in our study that the development of fetal lung maturation degree is generally proportional to the gestational age. Then, in the second stage, the pretrained deep model is trained to accurately estimate the gestational age from the fetal lung region of ultrasound images.

RESULTS

Totally 332 patients were included in our study, while the first 206 patients were used for training and the subsequent 126 patients were used for the independent testing. The testing results of the established deep model have the imprecision as 1.56 ± 2.17 weeks on the gestational age estimation. Its correlation coefficient with the ground truth of gestational age achieves 0.7624 (95% CI 0.6779 to 0.8270, P value < 0.00001).

CONCLUSION

The hypothesis that the development of fetal lung maturation degree can be represented by the texture information from ultrasound images has been preliminarily validated. The fetal lung maturation degree can be considered as being represented by the deep model's output denoted by the estimated gestational age.

摘要

目的

评估胎儿肺成熟度对于临床实践至关重要,因为肺不成熟是新生儿发病率和死亡率的重要原因。为了评估胎儿肺成熟度的发育程度,我们从四腔心切面的超声图像中建立了一个深度模型。

方法

本研究提出了一种两阶段迁移学习方法。为应用的深度模型设计了一个特定的 U 型网络结构。在第一阶段,模型首先学习识别超声图像中的胎儿肺区域。我们的研究假设胎儿肺成熟度的发育通常与胎龄成正比。然后,在第二阶段,对预训练的深度模型进行训练,以从超声图像的胎儿肺区域准确估计胎龄。

结果

共有 332 名患者纳入本研究,其中前 206 名患者用于训练,随后的 126 名患者用于独立测试。建立的深度模型的测试结果在胎龄估计上的不精确性为 1.56±2.17 周。其与胎龄真实值的相关系数达到 0.7624(95%置信区间为 0.6779 至 0.8270,P 值<0.00001)。

结论

胎儿肺成熟度的发育可以通过超声图像的纹理信息来表示的假设已初步得到验证。可以认为胎儿肺成熟度可以通过估计的胎龄表示为深度模型的输出。

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