鲁棒预定义神经网络的同质集成实现了人类胚胎形态动力学的自动注释。

Q2 Medicine
Gunawan B Danardono, Alva Erwin, James Purnama, Nining Handayani, Arie A Polim, Arief Boediono, Ivan Sini
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引用次数: 0

摘要

背景:本研究的目的是利用卷积神经网络(CNN)和人工智能(AI)基于胚胎在特定时间点的形态变化自动注释胚胎发育,以降低人类在评估胚胎时的偏见风险。方法:胚胎学家对胚胎发育的延时视频进行人工标注,提取数据作为监督数据集,并根据形态学差异将数据分为14个独特的分类。通过TensorFlow Hub获得的同质预训练CNN模型的编译,使用迁移学习在受控环境中使用各种超参数进行测试,以创建新模型。随后,将人工智能模型在14个指定分类中正确注释胚胎形态的性能与不同内置配置的人工智能模型集合进行比较,从而得出准确率最高的模型。结果:最终获得了一个具有特定配置、准确率为67.68%的人工智能模型,能够预测胚胎发育阶段(t1、t2、t3、t4、t5、t6、t7、t8、t9+、tCompaction、tM、tSB、tB、tEB)。结论:目前,人工智能和机器学习在医疗领域的技术和研究取得了显著的持续进步,努力开发计算机辅助技术,从而有可能提高医务人员的工作效率和准确性。尽管如此,需要使用更大的数据构建AI模型,以适当提高AI模型的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Homogeneous Ensemble of Robust Pre-defined Neural Network Enables Automated Annotation of Human Embryo Morphokinetics.

A Homogeneous Ensemble of Robust Pre-defined Neural Network Enables Automated Annotation of Human Embryo Morphokinetics.

A Homogeneous Ensemble of Robust Pre-defined Neural Network Enables Automated Annotation of Human Embryo Morphokinetics.

Background: The purpose of the current study was to reduce the risk of human bias in assessing embryos by automatically annotating embryonic development based on their morphological changes at specified time-points with convolutional neural network (CNN) and artificial intelligence (AI).

Methods: Time-lapse videos of embryo development were manually annotated by the embryologist and extracted for use as a supervised dataset, where the data were split into 14 unique classifications based on morphological differences. A compilation of homogeneous pre-trained CNN models obtained via TensorFlow Hub was tested with various hyperparameters on a controlled environment using transfer learning to create a new model. Subsequently, the performances of the AI models in correctly annotating embryo morphologies within the 14 designated classifications were compared with a collection of AI models with different built-in configurations so as to derive a model with the highest accuracy.

Results: Eventually, an AI model with a specific configuration and an accuracy score of 67.68% was obtained, capable of predicting the embryo developmental stages (t1, t2, t3, t4, t5, t6, t7, t8, t9+, tCompaction, tM, tSB, tB, tEB).

Conclusion: Currently, the technology and research of artificial intelligence and machine learning in the medical field have significantly and continuingly progressed in an effort to develop computer-assisted technology which could potentially increase the efficiency and accuracy of medical personnel's performance. Nonetheless, building AI models with larger data is required to properly increase AI model reliability.

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来源期刊
Journal of Reproduction and Infertility
Journal of Reproduction and Infertility Medicine-Reproductive Medicine
CiteScore
2.70
自引率
0.00%
发文量
44
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