Zhao Zhuo, Liu Xiaoxu, Guan Yonghui, Li Chunfang, Wang Zheng
Key Laboratory of Shaanxi Province for Craniofacial Precision Medicine Research, College of Stomatology, Xi'an Jiaotong University, No.98, Xiwu Road, Xi'an, Shaanxi, People's Republic of China.
Clinical Research Center of Shaanxi Province for Dental and Maxillofacial Diseases, College of Stomatology, Xi'an Jiaotong University, No.98, Xiwu Road, Xi'an, Shaanxi, People's Republic of China.
BMC Pregnancy Childbirth. 2025 Apr 14;25(1):445. doi: 10.1186/s12884-025-07503-5.
Circulating cell-free RNA (cfRNA) is gaining recognition as an effective biomarker for the early detection of preeclampsia (PE). However, the current methods for selecting disease-specific biomarkers are often inefficient and typically one-dimensional.
This study introduces a Pyramid Scene Parsing Network (PSPNet) model to predict PE, aiming to improve early risk assessment using cfRNA profiles.
The theoretical maximum Preeclamptic Risk Index (PRI) of patients clinically diagnosed with PE is defined as "1", and the control group (NP) is defined as "0", referred to as the clinical PRI. A data preprocessing algorithm was used to screen relevant cfRNA indicators for PE. The cfRNA expression profiles were obtained from the Gene Expression Omnibus (GSE192902), consisting of 180 normal pregnancies (NP) and 69 preeclamptic (PE) samples, collected at two gestational time points: ≤ 12 weeks and 13-20 weeks. Based on the differences in cfRNA expression profiles, the Calculated Ground Truth values of the NP and PE groups in the sequencing data were acquired (Calculated PRI). The differential algorithm was embedded in the PSPNet neural network and the network was then trained using the generated dataset. Subsequently, the real-world sequencing dataset was used to validate and optimize the network, ultimately outputting the PRI values of the healthy control group and the PE group (PSPNet-based PRI). The model's predictive ability for PE was evaluated by comparing the fit between Calculated PRI (Calculated Ground Truth) and PSPNet-based PRI.
The mean absolute error (MAE) between the Calculated Ground Truth the PSPNet-based PRI was 0.0178 for cfRNA data sampled at ≤ 12 gws and 0.0195 for data sampled at 13-20 gws. For cfRNA data sequenced at ≤ 12 gws and 13-20 gws, the corresponding loss values, maximum absolute errors, peak-to-valley error values, mean absolute errors, and average prediction times per sample were 0.0178 (0.0195).
The present PSPNet model is reliable and fast for cfRNA-based PE prediction and its PRI output allows for continuous PE risk monitoring, introducing an innovative and effective method for early PE prediction. This model enables timely interventions and better management of pregnancy complications, particularly benefiting densely populated developing countries with high PE incidence and limited access to routine prenatal care.
循环游离RNA(cfRNA)作为子痫前期(PE)早期检测的有效生物标志物正逐渐得到认可。然而,目前选择疾病特异性生物标志物的方法往往效率低下且通常是一维的。
本研究引入金字塔场景解析网络(PSPNet)模型来预测PE,旨在利用cfRNA谱改善早期风险评估。
将临床诊断为PE的患者的理论最大子痫前期风险指数(PRI)定义为“1”,对照组(NP)定义为“0”,称为临床PRI。使用数据预处理算法筛选PE相关的cfRNA指标。cfRNA表达谱来自基因表达综合数据库(GSE192902),由180例正常妊娠(NP)和69例子痫前期(PE)样本组成,在两个孕周时间点收集:≤12周和13 - 20周。基于cfRNA表达谱的差异,获取测序数据中NP组和PE组的计算真值(计算PRI)。将差异算法嵌入PSPNet神经网络,然后使用生成的数据集对网络进行训练。随后,使用真实世界测序数据集对网络进行验证和优化,最终输出健康对照组和PE组的PRI值(基于PSPNet的PRI)。通过比较计算PRI(计算真值)与基于PSPNet的PRI之间的拟合度来评估该模型对PE的预测能力。
对于≤12孕周采集的cfRNA数据,计算真值与基于PSPNet的PRI之间的平均绝对误差(MAE)为0.0178,对于13 - 20孕周采集的数据为0.0195。对于在≤12孕周和13 - 20孕周测序的cfRNA数据,相应的损失值、最大绝对误差、峰谷误差值、平均绝对误差以及每个样本的平均预测时间分别为0.0178(0.0195)。
目前的PSPNet模型用于基于cfRNA的PE预测是可靠且快速的,其PRI输出允许对子痫前期风险进行持续监测,为子痫前期早期预测引入了一种创新且有效的方法。该模型能够及时进行干预并更好地管理妊娠并发症,尤其使子痫前期发病率高且常规产前检查机会有限的人口密集发展中国家受益。