Suppr超能文献

染色体检查:使用支持向量机学习模型预测产后染色体三体病例

ChromoCheck: Predicting Postnatal Chromosomal Trisomy Cases Using a Support Vector Machine Learning Model.

作者信息

Al-Mahrami Nabras, Al Jabri Nuha, Sallam Amal A W, Al Jahdhami Najwa, Zadjali Fahad

机构信息

Medical Laboratory Sciences Program, Health Sciences, Oman College of Health Sciences, P.O. Box 3720, Muscat 112, Oman.

Department of Clinical and Chemical Pathology, Research Institute of Ophthalmology, Giza 12511, Egypt.

出版信息

Genes (Basel). 2025 Jun 8;16(6):695. doi: 10.3390/genes16060695.

Abstract

INTRODUCTION

Chromosomal study via karyotype is one of the historical gold-standard procedures used to provide a clearer view of chromosomal trisomy abnormalities. It has been used to correlate several phenotypic manifestations that require immediate medical intervention. However, the laboratory procedure persisted with various drawbacks. The recent machine learning model shed light on prediction capabilities in the medical field. In this study, we aimed to use a support vector machine model for predicting postnatal chromosomal trisomy cases.

METHODS

A dataset of 946 neonatal records from the Royal Hospital, Muscat, Oman, covering the period from 2013 to 2023, has been used in this model. The model is based on features such as thyroxine hormone levels and thyroid-stimulating hormone levels. With different R packages, we used a support vector machine model with leave-one-out cross-validation and ten iterations to test three kernel functions: linear, radial, and polynomial.

RESULTS

Among the obtained kernel performances, the linear kernel has optimal classification performance. The training accuracy was 81%, and the testing accuracy was 82%. Sensitivity ranged from 97 to 98%, and specificity ranged from 79 to 80%. The area under the curve in relation to the training dataset came to 0.89, and it came to 0.90 for the test dataset. We deployed the trained models in a website tool called ChromoCheck.

CONCLUSIONS

Our study is an example of how machine learning can be instrumental in augmenting conventional methods of cytogenetics diagnosis and decision-making in a clinical setup.

摘要

引言

通过核型分析进行染色体研究是历史悠久的金标准程序之一,用于更清晰地观察染色体三体异常情况。它已被用于关联多种需要立即进行医学干预的表型表现。然而,该实验室程序存在各种缺点。最近的机器学习模型为医学领域的预测能力带来了曙光。在本研究中,我们旨在使用支持向量机模型来预测产后染色体三体病例。

方法

本模型使用了阿曼马斯喀特皇家医院2013年至2023年期间的946份新生儿记录数据集。该模型基于甲状腺激素水平和促甲状腺激素水平等特征。我们使用不同的R包,采用留一法交叉验证和十次迭代的支持向量机模型来测试三种核函数:线性核、径向基核和多项式核。

结果

在获得的核性能中,线性核具有最佳分类性能。训练准确率为81%,测试准确率为82%。灵敏度范围为97%至98%,特异性范围为79%至80%。训练数据集曲线下面积为0.89,测试数据集为0.90。我们将训练好的模型部署到一个名为“染色体检查”(ChromoCheck)的网站工具中。

结论

我们的研究展示了机器学习如何有助于增强临床环境中细胞遗传学诊断和决策的传统方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0af0/12192111/fd1c738936cb/genes-16-00695-g001.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验