基于时空电阻抗成像的腭裂言语呼吸功能评估:可解释性机器学习研究
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1)南京林业大学机械电子工程学院,南京 210037;2)泰州市中医院口腔科,泰州 225300;3)School of Engineering, The University of Edinburgh, Edinburgh EH9 3FB, UK;4)南京医科大学附属口腔医院口腔颌面外科,江苏省口腔疾病研究重点实验室,江苏省口腔转化医学工程研究中心,南京 210029;5)西安理工大学机械与精密仪器工程学院,西安 710048;6.6)暨南大学物理与光电工程学院,广州 510632

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国家自然科学基金(62501288),中国博士后科学基金(2025M771376,2025M771364),陕西省科技计划(2025GH-YBXM-007)和江苏省科技计划专项资金(BZ2024036)资助项目。


Spatiotemporal Electrical Impedance Tomography for Speech Respiratory Assessment in Cleft Palate: an Interpretable Machine Learning Study
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1)College of Mechanical and Electronic Engineering, Nanjing Forestry University, Nanjing 210037, China;2)Department of Stomatology, Taizhou Hospital of Traditional Chinese Medicine, Taizhou 225300, China;3)School of Engineering, The University of Edinburgh, Edinburgh EH9 3FB, UK;4)Jiangsu Engineering Research Center of Oral Translational Medicine, Jiangsu Key Laboratory of Oral Diseases, Department of Oral and Maxillofacial Surgery, The Affiliated Stomatological Hospital of Nanjing Medical University, Nanjing 210029, China;5)School of Mechanical and Precision Instrument Engineering, Xi’an University of Technology, Xi’an 710048, China;6.6)College of Physics and Optoelectronic Engineering, Jinan University, Guangzhou 510632, China

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This work was supported by grants from The National Natural Science Foundation of China (62501288), the China Postdoctoral Science Foundation (2025M771376, 2025M771364), the Shaanxi Provincial Science and Technology Program (2025GH-YBXM-007), and the Jiangsu Provincial Science and Technology Program Special Fund (BZ2024036).

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    摘要:

    目的 评估时空电阻抗断层成像(spatiotemporal electrical impedance tomography,ST-EIT)在言语发声任务下,能否有效捕捉并区分腭裂(cleft palate,CP)患者与正常对照(normal control,NC)的言语呼吸功能特征。方法 本研究纳入75名受试者(CP组37例,NC组38例)。在标准化发声任务中,同步采集电阻抗断层成像(electrical impedance tomography,EIT)图像与口鼻气流信号,构建涵盖时间、气流与空间维度的三域特征,采用曼-惠特尼U检验(Mann-Whitney U test)比较组间差异。基于肺量计法(spirometry)、鼻音计(nasometry)及ST-EIT等多源数据,分别训练极端梯度提升(extreme gradient boosting,XGBoost)分类模型,采用5折交叉验证评估性能,并引入Shapley加性解释(Shapley additive explanations,SHAP)方法进行特征贡献分析。结果 CP组呈现显著的呼吸表型差异。时间域中,吸/呼相位时长均显著缩短(P<0.001),吸/呼时间比显著升高;气流域中,呼气期平均气流与峰值气流显著增强,吸气期无明显差异;空间域中,感兴趣区(region of interest,ROI)1和4的潮气阻抗变化(tidal impedance variation,TIV)显著升高,ROI2显著降低,全局不均一性(global inhomogeneity,GI)较低,通气中心(center of ventilation,CoV)呈轻度升高。ST-EIT模型分类性能最佳,曲线下面积(area under the curve,AUC)达0.915,准确率优于单一肺功能检测或鼻音计检测。SHAP结果表明,时空特征对分类决策贡献最大。结论 ST-EIT技术能有效揭示CP患者言语呼吸功能在时间-气流-空间三域的特异性改变,为床旁筛查、康复评估及随访监测提供了优于常规检测的客观量化依据。

    Abstract:

    Objective Cleft palate (CP) is a common congenital deformity often associated with velopharyngeal insufficiency (VPI), which disrupts the physiological coupling between respiration and speech. Conventional clinical assessments, such as nasometry and spirometry, provide limited static data and fail to visualize the dynamic spatiotemporal distribution of lung ventilation during phonation. This study introduces spatiotemporal electrical impedance tomography (ST-EIT) to evaluate speech-respiratory functional features in CP patients compared to normal controls (NC). The aim is to characterize multi-domain respiratory patterns and to validate an interpretable machine learning framework for providing objective, quantitative evidence for clinical assessment.Methods Seventy-five participants were enrolled in this study, comprising 37 patients with surgically repaired CP and 38 healthy volunteers matched for age, gender, and body mass index (BMI). All subjects performed standardized sustained phonation tasks while undergoing synchronous monitoring with a 16-electrode EIT system and a pneumotachograph. A comprehensive feature engineering pipeline was developed to extract physiological parameters across 3 complementary domains. (1) Temporal domain: including inspiratory/expiratory phase duration (tPhase), time constants (Tau), and inspiratory-to-expiratory time ratios (TI/TE); (2) airflow domain: comprising mean flow, peak flow, and instantaneous flow at 25%, 50%, and 75% of tidal volume; and (3) spatial domain: quantifying global and regional tidal impedance variation (TIV), global inhomogeneity (GI), and center of ventilation (CoV). Extreme Gradient Boosting (XGBoost) classifiers were trained using 5 distinct data sources (Spirometry, Nasometry, Inspiratory-EIT, Expiratory-EIT, and fused ST-EIT). Model performance was rigorously evaluated via stratified 5-fold cross-validation, and Shapley additive explanations (SHAP) were employed to quantify global and local feature contributions.Results The CP group exhibited a distinct respiratory phenotype compared to controls. In the temporal domain, CP patients showed significantly shorter inspiratory (1.60 s vs. 1.85 s, P<0.001) and expiratory phase durations (2.45 s vs. 3.95 s, P<0.001), indicating a rapid, shallow breathing rhythm. In the airflow domain, while inspiratory flows were comparable, the CP group demonstrated significantly elevated mean and peak flows during the expiratory phase (P<0.001), reflecting compensatory respiratory effort. Spatially, CP patients presented significant ventilation redistribution, characterized by higher regional TIV in the right-anterior (ROI1) and left-posterior (ROI4) quadrants, but lower TIV in the left-anterior (ROI2) quadrant. In terms of diagnostic accuracy, the multi-modal ST-EIT model achieved the highest performance (AUC: 0.915±0.012, Accuracy: 0.843±0.019, F1-score: 0.872±0.017), substantially outperforming models based on spirometry (AUC: 0.721) or nasometry (AUC: 0.625) alone. Interpretability analysis revealed that spatial domain features were the most critical, contributing 53.4% to the model’s decision-making, followed by temporal (25.0%) and airflow (21.6%) features.Conclusion ST-EIT successfully captures the temporal, airflow, and spatial deviations in CP speech respiration that are undetectable by conventional methods—specifically, rapid phase transitions, hyperdynamic expiratory airflow, and regional ventilation heterogeneity. This study validates ST-EIT as a robust, non-invasive, and radiation-free tool for characterizing speech-respiratory dysfunction, offering high clinical value for bedside screening, rehabilitation planning, and longitudinal monitoring of patients with cleft palate.

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吴阳,张晓菁,于浩,姜成惠,孙博,姚佳烽.基于时空电阻抗成像的腭裂言语呼吸功能评估:可解释性机器学习研究[J].生物化学与生物物理进展,2026,53(2):485-500

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  • 收稿日期:2025-10-27
  • 最后修改日期:2026-01-23
  • 录用日期:2026-01-09
  • 在线发布日期: 2026-01-12
  • 出版日期: 2026-02-28
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