使用生物材料诱导的血液细胞因子水平预测盆腔器官脱垂术后结果:机器学习方法。

Mihyun Lim Waugh, Nicholas Boltin, Lauren Wolf, Jane Goodwin, Patti Parker, Ronnie Horner, Matthew Hermes, Thomas Wheeler, Richard Goodwin, Melissa Moss
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引用次数: 0

摘要

背景:盆腔器官脱垂(POP)是指有症状的阴道壁下降。为了减少手术失败率,手术矫正可以增加聚丙烯网的插入。这种好处被补片并发症的风险所抵消,主要是通过阴道壁暴露补片。如果考虑将补片放置作为脱垂修复的一部分,患者的选择和咨询将受益于补片暴露的预测;然而,目前还没有这种可靠的术前方法。过去的研究表明,炎症和相关的细胞因子释放与补片并发症有关。虽然植入过程中会出现一定程度的网状细胞因子反应,但过度或持续的细胞因子反应可能引发炎症和植入排斥反应。目的:在这里,我们探讨了接受POP修复手术的患者的生物材料诱导的血液细胞因子水平,以:(1)确定细胞因子表达之间的相关性;(2)预测手术后通过阴道壁的补片暴露。方法:收集20例经阴道放置聚丙烯网片矫正POP手术的女性患者的血液样本。其中包括10名手术后通过阴道壁暴露补片的患者和10名没有手术的患者。采用多重检测法,分别用炎症剂脂多糖、无菌聚丙烯网片和单独培养的血液样本,分析13种促炎和抗炎细胞因子的血浆水平。通过主成分分析(PCA)对数据进行分析,以揭示细胞因子之间的关联,并确定细胞因子模式与术后经阴道壁的补片暴露相关。创建监督机器学习模型来预测是否存在网格暴露,并探测有效预测所需的细胞因子测量数量。结果:PCA显示,促炎细胞因子干扰素γ、白细胞介素12p70和白细胞介素2是pc1中解释方差的最大贡献者,而抗炎细胞因子白细胞介素10、4和6是pc2中解释方差的最大贡献者。此外,PCA区分了细胞因子相关性,这意味着前瞻性治疗可以改善术后预后。在所有13种细胞因子训练的机器学习模型中,人工神经网络是表现最好的模型,预测POP手术结果的准确率为83% (15/18);当仅使用7种细胞因子训练时,相同的模型预测POP手术结果的准确率为78%(14/18),表明使用较小的细胞因子组仍然具有预测能力。结论:这项初步研究纳入了仅20名参与者的样本量,确定了细胞因子之间的相关性,并证明了这种新方法在经阴道POP修复手术后通过阴道壁预测补片暴露的潜力。将进行更大样本量的进一步研究以证实这些结果。如果得到证实,该方法可以提供一种个性化的医学方法,以帮助外科医生推荐具有最小不良后果的POP修复手术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of Pelvic Organ Prolapse Postsurgical Outcome Using Biomaterial-Induced Blood Cytokine Levels: Machine Learning Approach.

Prediction of Pelvic Organ Prolapse Postsurgical Outcome Using Biomaterial-Induced Blood Cytokine Levels: Machine Learning Approach.

Prediction of Pelvic Organ Prolapse Postsurgical Outcome Using Biomaterial-Induced Blood Cytokine Levels: Machine Learning Approach.

Prediction of Pelvic Organ Prolapse Postsurgical Outcome Using Biomaterial-Induced Blood Cytokine Levels: Machine Learning Approach.

Background: Pelvic organ prolapse (POP) refers to symptomatic descent of the vaginal wall. To reduce surgical failure rates, surgical correction can be augmented with the insertion of polypropylene mesh. This benefit is offset by the risk of mesh complication, predominantly mesh exposure through the vaginal wall. If mesh placement is under consideration as part of prolapse repair, patient selection and counseling would benefit from the prediction of mesh exposure; yet, no such reliable preoperative method currently exists. Past studies indicate that inflammation and associated cytokine release is correlated with mesh complication. While some degree of mesh-induced cytokine response accompanies implantation, excessive or persistent cytokine responses may elicit inflammation and implant rejection.

Objective: Here, we explore the levels of biomaterial-induced blood cytokines from patients who have undergone POP repair surgery to (1) identify correlations among cytokine expression and (2) predict postsurgical mesh exposure through the vaginal wall.

Methods: Blood samples from 20 female patients who previously underwent surgical intervention with transvaginal placement of polypropylene mesh to correct POP were collected for the study. These included 10 who experienced postsurgical mesh exposure through the vaginal wall and 10 who did not. Blood samples incubated with inflammatory agent lipopolysaccharide, with sterile polypropylene mesh, or alone were analyzed for plasma levels of 13 proinflammatory and anti-inflammatory cytokines using multiplex assay. Data were analyzed by principal component analysis (PCA) to uncover associations among cytokines and identify cytokine patterns that correlate with postsurgical mesh exposure through the vaginal wall. Supervised machine learning models were created to predict the presence or absence of mesh exposure and probe the number of cytokine measurements required for effective predictions.

Results: PCA revealed that proinflammatory cytokines interferon gamma, interleukin 12p70, and interleukin 2 are the largest contributors to the variance explained in PC 1, while anti-inflammatory cytokines interleukins 10, 4, and 6 are the largest contributors to the variance explained in PC 2. Additionally, PCA distinguished cytokine correlations that implicate prospective therapies to improve postsurgical outcomes. Among machine learning models trained with all 13 cytokines, the artificial neural network, the highest performing model, predicted POP surgical outcomes with 83% (15/18) accuracy; the same model predicted POP surgical outcomes with 78% (14/18) accuracy when trained with just 7 cytokines, demonstrating retention of predictive capability using a smaller cytokine group.

Conclusions: This preliminary study, incorporating a sample size of just 20 participants, identified correlations among cytokines and demonstrated the potential of this novel approach to predict mesh exposure through the vaginal wall following transvaginal POP repair surgery. Further study with a larger sample size will be pursued to confirm these results. If corroborated, this method could provide a personalized medicine approach to assist surgeons in their recommendation of POP repair surgeries with minimal potential for adverse outcomes.

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