Deep learning model using continuous skin temperature data predicts labor onset.

IF 2.8 2区 医学 Q1 OBSTETRICS & GYNECOLOGY BMC Pregnancy and Childbirth Pub Date : 2024-11-25 DOI:10.1186/s12884-024-06862-9
Chinmai Basavaraj, Azure D Grant, Shravan G Aras, Elise N Erickson
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Abstract

Background: Changes in body temperature anticipate labor onset in numerous mammals, yet this concept has not been explored in humans. We investigated if continuous body temperature exhibits similar changes in women and whether these changes may be linked to hormonal status. Finally, we developed a deep learning model using temperature patterning to provide a daily forecast of time to labor onset.

Methods: We evaluated patterns in continuous skin temperature data in 91 (n = 54 spontaneous labors) pregnant women using a wearable smart ring. In a subset of 28 pregnancies, we examined daily steroid hormone samples leading up to labor to analyze relationships among hormones and body temperature trajectory. Finally, we applied an autoencoder long short-term memory (AE-LSTM) deep learning model to provide a novel daily estimation of days until labor onset.

Results: Features of temperature change leading up to labor were associated with urinary hormones and labor type. Spontaneous labors exhibited greater estriol to α-pregnanediol ratio, as well as lower body temperature and more stable circadian rhythms compared to pregnancies that did not undergo spontaneous labor. Skin temperature data from 54 pregnancies that underwent spontaneous labor between 34 and 42 weeks of gestation were included in training the AE-LSTM model, and an additional 37 pregnancies that underwent artificial induction of labor or Cesarean without labor were used for further testing. The input to the pipeline was 5-min skin temperature data from a gestational age of 240 days until the day of labor onset. During cross-validation AE-LSTM average error (true - predicted) dropped below 2 days at 8 days before labor, independent of gestational age. Labor onset windows were calculated from the AE-LSTM output using a probabilistic distribution of model error. For these windows AE-LSTM correctly predicted labor start for 79% of the spontaneous labors within a 4.6-day window at 7 days before true labor, and 7.4-day window at 10 days before true labor.

Conclusion: Continuous skin temperature reflects progression toward labor and hormonal change during pregnancy. Deep learning using continuous temperature may provide clinically valuable tools for pregnancy care.

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利用连续皮肤温度数据的深度学习模型预测分娩开始。
背景:在许多哺乳动物中,体温的变化预示着分娩的开始,但这一概念尚未在人类中得到探讨。我们研究了女性的连续体温是否会出现类似的变化,以及这些变化是否可能与荷尔蒙状态有关。最后,我们利用体温模式开发了一个深度学习模型,以提供分娩开始时间的每日预测:我们使用可穿戴智能戒指对 91 名(n = 54 名自然分娩)孕妇的连续皮肤温度数据模式进行了评估。在 28 名孕妇的子集中,我们检查了临产前的每日类固醇激素样本,以分析激素与体温轨迹之间的关系。最后,我们应用自动编码器长短期记忆(AE-LSTM)深度学习模型,对临产前的天数进行了新颖的每日估计:结果:临产前的体温变化特征与泌尿激素和分娩类型有关。与未进行自然分娩的孕妇相比,自然分娩的孕妇表现出更高的雌三醇与α-孕二醇比率,以及更低的体温和更稳定的昼夜节律。在训练 AE-LSTM 模型时,纳入了 54 名妊娠 34 到 42 周之间自然分娩的孕妇的皮肤温度数据,并使用另外 37 名人工引产或剖宫产的孕妇的皮肤温度数据进行进一步测试。该管道的输入是妊娠 240 天至分娩当天的 5 分钟皮肤温度数据。在交叉验证过程中,AE-LSTM 的平均误差(真实-预测)在临产前 8 天降至 2 天以下,与胎龄无关。根据 AE-LSTM 输出,利用模型误差的概率分布计算出了分娩开始窗口。在这些窗口中,AE-LSTM 能正确预测 79% 的自然分娩在真正分娩前 7 天的 4.6 天窗口内开始,在真正分娩前 10 天的 7.4 天窗口内开始:结论:连续皮肤温度可反映妊娠期的分娩进展和激素变化。利用连续体温进行深度学习可为孕期护理提供有临床价值的工具。
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来源期刊
BMC Pregnancy and Childbirth
BMC Pregnancy and Childbirth OBSTETRICS & GYNECOLOGY-
CiteScore
4.90
自引率
6.50%
发文量
845
审稿时长
3-8 weeks
期刊介绍: BMC Pregnancy & Childbirth is an open access, peer-reviewed journal that considers articles on all aspects of pregnancy and childbirth. The journal welcomes submissions on the biomedical aspects of pregnancy, breastfeeding, labor, maternal health, maternity care, trends and sociological aspects of pregnancy and childbirth.
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