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使用机器学习的卵巢定量和定性储备评估及预测模型

Assessment and prediction models for the quantitative and qualitative reserve of the ovary using machine learning.

作者信息

Koike Hiroshi, Harada Miyuki, Yoshida Kaname, Noda Katsuhiko, Tsuchida Chihiro, Fujiwara Toshihiro, Kusamoto Akari, Xu Zixin, Tanaka Tsurugi, Sakaguchi Nanoka, Kunitomi Chisato, Takahashi Nozomi, Urata Yoko, Sone Kenbun, Wada-Hiraike Osamu, Hirota Yasushi, Osuga Yutaka

机构信息

Department of Obstetrics and Gynecology, Faculty of Medicine, The University of Tokyo, 7-3-1, Hongo, Bunkyo-ku, Tokyo, 113-8655, Japan.

SIOS Technology, Inc., 2-12-3, Minamiazabu, Minato-ku, Tokyo, 106-0047, Japan.

出版信息

J Ovarian Res. 2025 Jul 18;18(1):153. doi: 10.1186/s13048-025-01732-0.

Abstract

BACKGROUND

The age-related decline of fertility is caused by a reduction of the ovarian reserve, which is represented by the number and quality of oocytes in the ovaries. Anti-Müllerian hormone (AMH) is considered one of the most useful markers of the quantity of the ovarian reserve; however, a more accurate prediction method is required. Furthermore, there is no clinically useful tool to assess the quality of the ovarian reserve and therefore a prediction tool is required. Our aim is to produce a model for prediction of the ovarian reserve that contributes to preconception care and precision medicine.

METHODS

This study was a retrospective analysis of 442 patients undergoing assisted reproductive technology (ART) treatment in Japan from June 2021 to January 2023. Medical records and residual serum of patients undergoing oocyte retrieval were collected. Binary classification models predicting the ovarian reserve were created using machine learning methods developed with many collected feature values. The best-performing model among 15 examined models was selected based on its area under the receiver operating characteristic curve (AUC) and accuracy. To maximize performance, feature values used for model creation were narrowed down and extracted.

RESULTS

The best-performing model to assess the quantity of the ovarian reserve was the random forest model with an AUC of 0.9101. Five features were selected to create the model and consisted of data from only medical records. The best-performing model to assess the quality of the ovarian reserve was the random forest model, which had an AUC of 0.7983 and was created with 14 features, data from medical records and residual serum analysis.

CONCLUSION

Our models are more accurate than currently popular methods for predicting the ovarian reserve. Furthermore, they can assess the ovarian reserve using only information obtained from a medical interview and single blood sampling. Enabling easy measurement of the ovarian reserve with this model would allow a greater number of women to engage in preconception care and facilitate the delivery of personalized medical treatment for patients undergoing infertility therapy.

CLINICAL TRIAL NUMBER

Not applicable.

摘要

背景

生育能力的年龄相关性下降是由卵巢储备减少引起的,卵巢储备由卵巢中卵母细胞的数量和质量来体现。抗苗勒管激素(AMH)被认为是卵巢储备数量最有用的标志物之一;然而,仍需要一种更准确的预测方法。此外,目前尚无临床上用于评估卵巢储备质量的有用工具,因此需要一种预测工具。我们的目标是建立一个有助于孕前保健和精准医学的卵巢储备预测模型。

方法

本研究是对2021年6月至2023年1月在日本接受辅助生殖技术(ART)治疗的442例患者进行的回顾性分析。收集了接受取卵患者的病历和剩余血清。使用通过许多收集到的特征值开发的机器学习方法创建预测卵巢储备的二元分类模型。根据其受试者工作特征曲线下面积(AUC)和准确性,从15个检查模型中选择性能最佳的模型。为了使性能最大化,对用于模型创建的特征值进行了缩小和提取。

结果

评估卵巢储备数量的最佳模型是随机森林模型,AUC为0.9101。选择了五个特征来创建该模型,且仅由病历数据组成。评估卵巢储备质量的最佳模型是随机森林模型,AUC为0.7983,由14个特征创建,包括病历数据和剩余血清分析数据。

结论

我们的模型在预测卵巢储备方面比目前流行的方法更准确。此外,它们仅使用从医学访谈和单次血液采样获得的信息就能评估卵巢储备。使用该模型能够轻松测量卵巢储备,这将使更多女性能够参与孕前保健,并为接受不孕症治疗的患者提供个性化医疗服务。

临床试验编号

不适用。

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