Monogram and Heat Map on Magnetic Resonance Imaging to Evaluate the Recommendation for Myomectomy in Patients with Infertility: A Pilot Study.

IF 2.6 3区 医学 Q2 OBSTETRICS & GYNECOLOGY
Reproductive Sciences Pub Date : 2025-01-01 Epub Date: 2024-08-29 DOI:10.1007/s43032-024-01667-9
Takuya Yokoe, Masato Kita, Hidetaka Okada
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引用次数: 0

Abstract

Uterine myomas can cause infertility. Studies are attempting to determine the indications for myomectomy. However, the multiplicity and localization of myomas complicate this issue. We aimed to develop a visualization tool to aid patients with infertility in their decision-making for myomectomy. We included 191 women with uterine myoma attending an outpatient infertility clinic, of whom 124 patients underwent myomectomy. Of these, 65 (52.4%) patients became pregnant within 17.6 months after surgery, and 54 (83.1%) of them had a live birth. A logistic regression model predicting the pregnancy rate (area under the curve, 0.82; 95% confidence interval, 0.74-0.89; validation value, 74.6%) was generated using the leave-one-out cross-validation method. This model incorporated five factors: age, maximum level of infertility intervention following myomectomy, presence of submucosal myoma, maximum diameter of the myoma, and type of myomas (multiple or single). We successfully visualized the degree of involvement of each factor in the pregnancy rate by developing a nomogram based on this model. We expanded the data from the preoperative magnetic resonance images and applied machine learning using a convolutional neural network. The classification accuracy was 71.4% for sensitivity and 77.7% for specificity. Heatmap images, generated using gradient-weighted class activation mapping to show the classification results of this model, could distinguish between myomas that required enucleation and those that did not. Although a larger sample size is needed to further validate our findings, this innovative pilot study demonstrates the potential of machine learning to refine assessment criteria and improve patient decision-making.

Abstract Image

用磁共振成像的单图和热图评估不孕症患者肌瘤切除术的建议:试点研究。
子宫肌瘤可导致不孕。研究试图确定子宫肌瘤切除术的适应症。然而,子宫肌瘤的多发性和局部性使这一问题变得更加复杂。我们旨在开发一种可视化工具,帮助不孕症患者决定是否进行子宫肌瘤切除术。我们将 191 名患有子宫肌瘤的妇女纳入不孕症门诊,其中 124 名患者接受了子宫肌瘤切除术。其中,65 名(52.4%)患者在术后 17.6 个月内怀孕,54 名(83.1%)活产。采用留一交叉验证法生成了预测怀孕率的逻辑回归模型(曲线下面积,0.82;95% 置信区间,0.74-0.89;验证值,74.6%)。该模型包含五个因素:年龄、肌瘤切除术后不孕症干预的最大程度、粘膜下肌瘤的存在、肌瘤的最大直径以及肌瘤的类型(多发或单发)。我们根据这个模型绘制了一个提名图,成功地直观显示了每个因素对妊娠率的影响程度。我们扩展了术前磁共振图像的数据,并使用卷积神经网络进行机器学习。分类的灵敏度为 71.4%,特异度为 77.7%。使用梯度加权类激活映射生成的热图图像显示了该模型的分类结果,可以区分需要去核和不需要去核的肌瘤。尽管需要更大的样本量来进一步验证我们的研究结果,但这项创新性的试验研究证明了机器学习在完善评估标准和改善患者决策方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Reproductive Sciences
Reproductive Sciences 医学-妇产科学
CiteScore
5.50
自引率
3.40%
发文量
322
审稿时长
4-8 weeks
期刊介绍: Reproductive Sciences (RS) is a peer-reviewed, monthly journal publishing original research and reviews in obstetrics and gynecology. RS is multi-disciplinary and includes research in basic reproductive biology and medicine, maternal-fetal medicine, obstetrics, gynecology, reproductive endocrinology, urogynecology, fertility/infertility, embryology, gynecologic/reproductive oncology, developmental biology, stem cell research, molecular/cellular biology and other related fields.
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