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一种用于早期预测胎儿生长受限的视觉词加权袋模型。

A weighted bag of visual words model for predicting fetal growth restriction at an early stage.

作者信息

Dong Ani, Zhang Yiheng, Li Weiling, Chen Mengjie

机构信息

School of Artificial Intelligence, Dongguan City University, Dongguan, Guangdong, China.

School of Computer Science and Technology, Dongguan University of Technology, Dongguan, China.

出版信息

Front Med (Lausanne). 2025 Jun 17;12:1529666. doi: 10.3389/fmed.2025.1529666. eCollection 2025.

Abstract

PURPOSE

Fetal growth restriction (FGR) is a significant concern for clinicians and pregnant women, as it is associated with increased fetal and neonatal mortality and morbidity. Although ultrasound has been the gold standard for many years to define FGR, it remains less than ideal for early detection of FGR. Placental dysfunction is a key factor in the development of FGR. The objective of this study is to achieve the early detection of FGR through the utilization of placental ultrasound images.

METHODS

A retrospective analysis was conducted using 80 placental ultrasound images from 40 FGR fetuses and 40 normal fetuses matched for gestational age. Approximately 300 texture features were extracted from the placental images using key texture feature selection and histogram of oriented gradients (HOG) extraction methods. These features were then re-encoded using a bag-of-visual-words model with weight scaling, resulting in more effective features. The encoded image features were used to train a classifier, and ensemble prediction techniques were used to improve classification accuracy.

RESULT

In this study, we applied the proposed method alongside several popular image classification methods for predicting FGR. The proposed method achieved the best experimental results, with an accuracy of 70% and an F1 score of 0.7653. We also compared different feature extraction methods separately, and the experimental results showed that HOG feature extraction is more suitable for feature extraction of ultrasound placental images. Finally, we plotted the receiver operating characteristic (ROC) curve with an area under the curve (AUC) value of 0.80.

CONCLUSION

To enable early prediction of FGR, we propose a visual bag-of-words model based on weight scaling for analyzing placental ultrasound images in the early stages-before significant fetal impairment occurs. The proposed model shows strong potential to assist doctors in making preliminary assessments, thereby facilitating earlier intervention. This can help reduce the risk of harm to both fetuses and pregnant women.

摘要

目的

胎儿生长受限(FGR)是临床医生和孕妇关注的重要问题,因为它与胎儿及新生儿死亡率和发病率的增加相关。尽管多年来超声一直是定义FGR的金标准,但对于FGR的早期检测仍不尽如人意。胎盘功能障碍是FGR发生发展的关键因素。本研究的目的是通过利用胎盘超声图像实现FGR的早期检测。

方法

对40例FGR胎儿和40例孕周匹配的正常胎儿的80幅胎盘超声图像进行回顾性分析。使用关键纹理特征选择和定向梯度直方图(HOG)提取方法从胎盘图像中提取约300个纹理特征。然后使用带权重缩放的视觉词袋模型对这些特征进行重新编码,从而得到更有效的特征。将编码后的图像特征用于训练分类器,并使用集成预测技术提高分类准确率。

结果

在本研究中,我们将所提出的方法与几种常用的图像分类方法一起应用于预测FGR。所提出的方法取得了最佳实验结果,准确率为70%,F1分数为0.7653。我们还分别比较了不同的特征提取方法,实验结果表明HOG特征提取更适合于超声胎盘图像的特征提取。最后,我们绘制了受试者工作特征(ROC)曲线,曲线下面积(AUC)值为0.80。

结论

为了实现FGR的早期预测,我们提出一种基于权重缩放的视觉词袋模型,用于在胎儿出现明显损伤之前的早期阶段分析胎盘超声图像。所提出的模型显示出强大的潜力,可协助医生进行初步评估,从而促进更早的干预。这有助于降低对胎儿和孕妇的伤害风险。

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