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超声造影剂的制备:基于神经网络模型的造影剂结构-回声性相关性探索

Preparation of ultrasound contrast agents: The exploration of the structure-echogenicity relationship of contrast agents based on neural network model.

作者信息

Li Feng, Xu Wensheng, Feng Yujin, Wang Wengang, Tian Hui, He Suhuan, Li Liang, Xiang Bai, Wang Yueheng

机构信息

Department of Ultrasound, The Second Hospital of Hebei Medical University, Shijiazhuang, Hebei, China.

The First Outpatient Department of Hebei Province, Shijiazhuang, Hebei, China.

出版信息

Front Oncol. 2022 Oct 5;12:964314. doi: 10.3389/fonc.2022.964314. eCollection 2022.

Abstract

There is a need to standardize the process of micro/nanobubble preparation to bring it closer to clinical translation. We explored a neural network-based model to predict the structure-echogenicity relationship for the preparation and fabrication of ultrasound-enhanced contrast agents. Seven formulations were screened, and 109 measurements were obtained. An artificial neural network-multilayer perceptron (ANN-MLP) model was used. The original data were divided into the training and testing groups, which included 73 and 36 groups of data, respectively. The hidden layer was selected from three hidden layers and included bias. The classification graph showed that the predicted values of the training and testing groups were 76.7% and 66.7%, respectively. According to the receiver operating characteristic curve, the accuracy of different imaging effects could achieve a prediction rate of 88.1-96.5%. The percentage graph showed that the data were gradually converging. The predictive analysis curves of different ultrasound effects gradually approached stable value of Gain. Normalized importance predicted contributions for the Pk1, poly-dispersity index (PDI), and intensity account were 100%, 98.5%, and 89.7%, respectively. The application of the ANN-MLP model is feasible and effective for the exploration of the synthesis process of ultrasound contrast agents. 1,2-Distearoyl-sn-glycero-3 phosphoethanolamine-N (methoxy[polyethylene glycol]-2000) (DSPE PEG-2000) correlated highly with the success rate of contrast agent synthesis.

摘要

需要规范微/纳米气泡的制备过程,使其更接近临床应用。我们探索了一种基于神经网络的模型,以预测超声增强造影剂制备和制造过程中的结构-回声性之间的关系。筛选了七种配方,获得了109次测量数据。使用了人工神经网络-多层感知器(ANN-MLP)模型。原始数据被分为训练组和测试组,分别包括73组和36组数据。隐藏层从三个隐藏层中选择,并包含偏差。分类图显示,训练组和测试组的预测值分别为76.7%和66.7%。根据受试者工作特征曲线,不同成像效果的准确率可达到88.1%-96.5%的预测率。百分比图显示数据正在逐渐收敛。不同超声效果的预测分析曲线逐渐接近增益的稳定值。对Pk1、多分散指数(PDI)和强度值的归一化重要性预测贡献分别为100%、98.5%和89.7%。ANN-MLP模型在超声造影剂合成过程探索中的应用是可行且有效的。1,2-二硬脂酰-sn-甘油-3-磷酸乙醇胺-N(甲氧基[聚乙二醇]-2000)(DSPE PEG-2000)与造影剂合成成功率高度相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d840/9581267/f4f9bf0998c2/fonc-12-964314-g001.jpg

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