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科学与医疗

医学 AI

医学智能、临床 AI、医学影像、病理、诊断和医疗健康大模型。

今日/当前日期收录 8 信号源:cs.CV, cs.LG, q-bio, eess.IV, eess.SP
2606.19092 2026-06-18 stat.AP cs.LG 新提交 90%

Context-Aware Optimization of Follow-Up Intervals for Type 2 Diabetes Care Using Markov Decision Processes

使用马尔可夫决策过程对2型糖尿病护理随访间隔进行上下文感知优化

Parisa Lotfibagha, Kristen Miller, William J. Gallagher, Elizabeth B. Selden, Muge Capan

发表机构 * University of Massachusetts Amherst(马萨诸塞大学阿默斯特分校) National Center for Human Factors in Healthcare(医疗人因国家中心) Georgetown University School of Medicine(乔治城大学医学院) Medstar Georgetown University Hospital(Medstar乔治城大学医院)

专题命中 健康监测 :优化2型糖尿病随访间隔

AI总结 提出上下文马尔可夫决策过程模型,利用电子健康记录数据为2型糖尿病患者优化个性化随访间隔,识别低风险和高风险亚群,相比固定间隔策略显著降低预期累积成本。

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AI中文摘要

慢性病管理依赖于定期的医患互动来跟踪疾病进展和控制。对于2型糖尿病,当前指南对所有患者规定固定的初级保健随访间隔,忽略了临床轨迹和患者特征的异质性。本研究引入上下文马尔可夫决策过程模型,利用来自10个初级保健诊所的22,154名2型糖尿病患者的电子健康记录数据,优化亚群特定的随访间隔决策。上下文通过以下方式识别:i) 利用主成分分析对代表个体健康轨迹的变量进行降维,以及ii) 通过主成分和额外的患者层面特征使用聚类将患者分配到上下文中。出现了两个不同的上下文,分别代表低风险和高风险亚群。CMDP导出的策略建议:(i) 如果当前就诊的实验室值未测量,则在1个月内随访;(ii) 对于实验室值升高或近期住院,最多3个月;(iii) 对于持续血糖控制,6至12个月,高风险上下文患者的随访间隔更短。最优策略实现了比基准更低的预期累积成本(例如,在高共病上下文中,相对于美国糖尿病协会类似的固定间隔随访策略,CMDP策略降低了约34.8%的成本;在低共病上下文中降低了约6.4%)。这些发现展示了上下文感知方法如何为适应性随访策略提供信息,并有可能通过综合机器学习和概率决策模型来推进初级保健中的慢性病管理。

英文摘要

Chronic disease management relies on regular patient-provider interactions to follow-up on disease progression and control. For Type 2 Diabetes (T2D), current guidelines prescribe fixed time intervals between subsequent primary care visits for all patients, overlooking heterogeneity in clinical trajectories and patient characteristics. This study introduces a Contextual Markov Decision Process (CMDP) model to optimize subpopulation-specific follow-up interval decisions using Electronic Health Record (EHR) data from 22,154 T2D patients across 10 primary care clinics. Contexts are identified by: i) dimensionality reduction of variables representing the individual health trajectories utilizing Principal Component Analysis, and ii) assigning patients to contexts via principal components and additional patient-level features using clustering. Two distinct contexts emerged, representing a lower- and a higher-risk subpopulation. CMDP-derived policies recommend: (i) follow-up within 1 month if lab value at current visit is unmeasured; (ii) up to 3 months for elevated lab values or recent hospitalizations; and (iii) 6 to 12 months for sustained glycemic control, with shorter follow-up intervals for patients in high-risk context. The optimal policies achieved lower expected cumulative cost than benchmarks (e.g., in the higher-comorbidity context, the CMDP policy reduced cost by about 34.8%, and in the lower-comorbidity context by about 6.4%, relative to an American Diabetes Association-like fixed interval follow-up policy. These findings demonstrate how context-aware approaches can inform adaptive follow-up strategies, and have the potential to advance chronic care management in primary care by synthesizing machine learning and probabilistic decision models.

2606.19292 2026-06-18 cs.LG 新提交 90%

Risk Stratification for ICU Delirium using Pervasive Ambient Sensing Information

使用普适环境感知信息进行ICU谵妄风险分层

Jiaqing Zhang, Sabyasachi Bandyopadhyay, Miguel Contreras, Jessica Sena, Yuanfang Ren, Andrea Davidson, Ziyuan Guan, Tezcan Ozrazgat-Baslanti, Subhash Nerella, Azra Bihorac, Parisa Rashidi

发表机构 * Department of Electrical and Computer Engineering, University of Florida, Gainesville, United States(佛罗里达大学电气与计算机工程系) Department of Medicine, Stanford University, Stanford, United States(斯坦福大学医学系) Department of Biomedical Engineering, University of Florida, Gainesville, United States(佛罗里达大学生物医学工程系) Department of Medicine, University of Florida, Gainesville, United States(佛罗里达大学医学系)

专题命中 健康监测 :环境感知预测ICU谵妄风险,临床AI应用

AI总结 本研究利用环境声音和光照强度数据,通过高效序列神经网络模型预测ICU患者谵妄风险,发现声音是主要预测因子,结合光照可改善短期预测,AUC达0.80。

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AI中文摘要

谵妄是重症监护室(ICU)中常见且严重的并发症,与发病率增加、住院时间延长和医疗成本升高相关。尽管其普遍存在,早期预测和预防仍具挑战性。环境因素如环境声音和光照可能影响谵妄的发生,但在风险评估中常被忽视。在本研究中,我们检验了光照强度和声压级是否能在多个预测时间窗口内独立预测谵妄。我们评估了四种高效的序列神经网络模型,这些模型基于来自9个ICU的309名患者的数据,用于预测10种预测窗口大小的谵妄。我们使用Shapley Additive Explanations分析报告了特征重要性和影响方向。卷积模型实现了最强的区分能力,在声音数据和组合数据上的AUC均为0.80。声音特征是整体上的主要预测因子。将声音与光照结合改善了短期(<1周)预测,组合模型在感知期后立即分配最高风险。这些发现表明,被动环境感知,尤其是声音,可以为谵妄风险评估增加临床上有意义、可解释的信号,并为丰富多模态ICU预测和预防策略提供实用途径。

英文摘要

Delirium is a common and serious complication in the Intensive Care Unit (ICU), associated with increased morbidity, prolonged hospital stays, and higher healthcare costs. Despite its prevalence, early prediction and prevention remain challenging. Environmental factors such as ambient sound and light may influence the onset of delirium, yet they are often overlooked in risk assessments. In this study, we examined whether light intensity and sound pressure levels can independently predict delirium across multiple prediction horizons. We evaluated four efficient sequential neural network models on data collected from 9 ICUs across 309 patients to predict delirium for 10 prediction-window sizes. We reported feature importance and direction of influence using Shapley Additive Explanations analysis. The convolutional model achieved the strongest discrimination, with AUC = 0.80 on sound data and on combined data. Sound features were the dominant predictors overall. Integrating sound with light improved short-term ($<1$ week) prediction, with the combined model assigning the highest risk immediately after the sensing period. These findings suggest that passive ambient sensing, especially sound, can add a clinically meaningful, interpretable signal for delirium risk estimation and offer a practical pathway to enrich multimodal ICU prediction and prevention strategies.

2606.18506 2026-06-18 cs.LG eess.SP stat.AP 新提交 90%

Beyond AHI: An Interpretable Causal-Discovery-Guided Framework for Sleep Recovery in Connected Health

超越AHI:一种可解释的因果发现引导的睡眠恢复框架在互联健康中的应用

Saba A. Farahani, Elahe Khatibi, Manoj Vishwanath, Amir M. Rahmani, Hung Cao

发表机构 * University of California, Irvine(加州大学尔湾分校)

专题命中 健康监测 :从多模态PSG推导睡眠恢复评分,用于睡眠评估

AI总结 提出一种可解释的因果发现引导框架,从多模态PSG中推导层次化睡眠恢复评分(SRS),在两大队列中SRS与感知恢复的关联强度是AHI的2.5倍。

Comments 6 pages, 2 figures, 2 tables. Accepted at the 2nd Workshop on Sensing and Computing for Smart and Connected Health (SCH), co-located with IEEE/ACM CHASE 2026

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AI中文摘要

客观睡眠评估依赖于多导睡眠图(PSG),但临床影响通常更好地反映在患者报告结局(PROs)如嗜睡和疲劳中。现有的总结指标,包括呼吸暂停低通气指数(AHI),对功能恢复背后的多域生理学提供的洞察有限。我们提出了一种可解释的、因果发现引导的框架,用于从多模态PSG中推导层次化睡眠恢复评分(SRS)。利用两个大型人群队列(MESA: n=1540; MrOS: n=825),我们应用有向无环图(DAG)学习来识别候选生理驱动因素,涵盖呼吸负担、缺氧负担、睡眠碎片化、睡眠结构和自主神经调节。尽管源自临床PSG,这些域自然映射到互联健康技术中日益可用的传感流,包括可穿戴心电图、血氧测定和睡眠阶段估计设备。为了保持机制合理性,我们引入了一个两阶段筛选过程,结合基于生理学的约束和受约束的LLM辅助审计,以识别和消除结构混杂因素以及构造重叠变量。跨队列,这五个域作为与恢复相关的重复生理域出现,所得SRS与感知恢复的关联强度高达AHI的2.5倍。通过将多模态睡眠生理学与以患者为中心的结果通过可解释、偏差感知和域结构化的框架联系起来,这项工作为临床睡眠研究和新兴智能互联健康环境中的恢复建模提供了实用基础。

英文摘要

Objective sleep assessment relies on polysomnography (PSG), yet clinical impact is often better reflected in patient-reported outcomes (PROs) such as sleepiness and fatigue. Existing summary indices, including the Apnea-Hypopnea Index (AHI), provide limited insight into the multidomain physiology underlying functional recovery. We propose an interpretable, causal-discovery--guided framework for deriving a hierarchical Sleep Recovery Score (SRS) from multimodal PSG. Using two large population cohorts (MESA: n=1540; MrOS: n=825), we apply directed acyclic graph (DAG) learning to identify candidate physiological drivers spanning respiratory burden, hypoxic burden, sleep fragmentation, sleep architecture, and autonomic regulation. Although derived from clinical PSG, these domains map naturally to sensing streams increasingly available in connected health technologies, including wearable ECG, oximetry, and sleep-stage estimation devices. To preserve mechanistic plausibility, we introduce a two-stage screening process that combines physiology-based constraints with constrained LLM-assisted auditing to identify and remove structural confounders and construct-overlapping variables. Across cohorts, these five domains emerge as recurrent physiological domains associated with recovery, and the resulting SRS shows up to 2.5$\times$ stronger alignment with perceived recovery than AHI. By linking multimodal sleep physiology to patient-centered outcomes through an interpretable, bias-aware, and domain structured framework, this work provides a practical foundation for recovery modeling across both clinical sleep studies and emerging smart and connected health settings.

2606.18640 2026-06-18 cs.LG q-bio.QM 新提交 85%

MetaboNet-Bench: A Multi-modal Benchmark for Glucose Forecasting in Type 1 Diabetes

MetaboNet-Bench:1型糖尿病血糖预测的多模态基准

Nathaniel Jeffries, Miriam Wolff, Sam Royston, Elizabeth Healey, Caleb Mayer, David Klonoff, Michael Snyder, Tao Wang

发表机构 * Department of Genetics, Stanford University School of Medicine(斯坦福大学医学院遗传学系) Replica Health Boston Children’s Hospital, Harvard Medical School(哈佛医学院波士顿儿童医院) Diabetes Research Institute, Mills-Peninsula Medical Center(米尔斯半岛医学中心糖尿病研究所)

专题命中 健康监测 :1型糖尿病血糖预测多模态基准

AI总结 针对1型糖尿病血糖预测算法缺乏标准化评估基准的问题,提出MetaboNet-Bench多模态基准,集成血糖、胰岛素和碳水化合物数据,通过多个模型对比验证多模态数据对模型性能的影响。

Comments main content in 10 pages with 5 figures; supplementary section with 11 more pages and 5 more figures

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AI中文摘要

血糖预测算法是1型糖尿病血糖控制管理的重要方面。迄今为止,研究社区已经开发了大量预测算法和模型。然而,公认的是,缺乏标准化的模型性能评估基准使得公平比较变得困难,并阻碍了进一步的创新,因此基准标准化迫在眉睫。此外,许多已发表的血糖预测算法仅限于CGM数据,忽略了其他多模态信号,如胰岛素剂量和碳水化合物摄入。在此,我们介绍MetaboNet-Bench,这是一个针对1型糖尿病患者的多模态血糖预测基准,它提供了一个可扩展的开源评估框架,用于比较利用血糖、胰岛素和碳水化合物数据的血糖预测算法。然后,我们通过基准测试几个最近发布的血糖预测模型和一个自定义的多模态时间序列模型(代表不同的模型架构)来展示其实用性。结果表明,添加数据模态的好处取决于模型的复杂性,并且纳入更多临床指标有助于识别未来研究中有意义的空白。

英文摘要

Glucose forecasting algorithms are an important aspect of glycemic control management in type 1 diabetes. So far, the research community has developed numerous algorithms and models for forecasting. However, it is well-recognized that the lack of standardized model performance evaluation benchmarks makes fair comparison difficult and hinders further innovation, and thus benchmark standardization is in urgent need. Furthermore, many published glucose forecasting algorithms are limited to CGM data alone, ignoring other multimodal signals such as insulin dosing and carbohydrate intake. Here, we introduce MetaboNet-Bench, a benchmark for multimodal glucose forecasting for patients with type 1 diabetes that provides an extensible open-source evaluation framework for comparison of glucose forecasting algorithms that leverage glucose, insulin, and carbohydrate data. We then demonstrate its utility by benchmarking several recently published glucose forecasting models and a custom multimodal time-series model, representing different model architectures. The results show that the benefit of adding data modalities is conditioned on the complexity of the model and that incorporating more clinical metrics helps identify meaningful gaps to fill for future research.

2511.06140 2026-06-18 q-bio.QM 80%

Non-invasive load measurement in the human tibia via spectral analysis of flexural waves

通过弯曲波的频谱分析非侵入式测量人体胫骨的负荷

Ali Yawar, Daniel H. Aslan, Daniel E. Lieberman

专题命中 健康监测 :非侵入式胫骨负荷测量,用于运动医学

AI总结 该研究提出了一种非侵入式测量胫骨压缩力的方法,通过分析胫骨中传播的弯曲波频谱,利用频谱峰值位置与压缩力的线性关系进行测量,验证了该方法在人体运动和体育医学中的应用潜力。

Comments 23 pages, 23 figures, 1 table. Manuscript revised for clarity and consistency

Journal ref J. R. Soc. Interface (2026) 23 (239): 20251206

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AI中文摘要

骨骼传递的力在人类生物力学中经常被研究,但非侵入式测量尤其在非实验室环境中具有挑战性。我们介绍了一种非侵入式、体内测量胫骨压缩力的技术,利用胫骨中传播的弯曲波。将胫骨建模为轴向压缩的欧拉-伯努利梁,显示胫骨弯曲波具有依赖于负载的频谱。在生理条件下,波加速谱中的峰值位置与胫骨上的压缩力线性变化,并可作为压缩力的代理。我们通过一个概念验证的可穿戴系统测试了该技术的有效性,该系统通过皮肤安装的机械换能器生成弯曲波,并利用皮肤安装的加速度计测量这些波的频谱。与梁理论一致,9名参与者的数据显示了胫骨压缩力与频谱峰值位置之间的线性关系,相关系数r=0.82-0.99(均值r=0.93)用于前后摆动试验,r=0.81-0.98(均值r=0.93)用于步行试验。这种基于弯曲波的技术可能催生一种新的可穿戴传感器,用于非侵入式生理骨负荷监测和测量,影响人类运动和运动医学的研究。

英文摘要

Forces transmitted by bones are routinely studied in human biomechanics, but it is challenging to measure them non-invasively, especially outside of laboratory settings. We introduce a technique for non-invasive, in vivo measurement of tibial compressive force using flexural waves propagating in the tibia. Modelling the tibia as an axially compressed Euler-Bernoulli beam, we show that tibial flexural waves have load-dependent frequency spectra. Specifically, under physiological conditions, peak locations in the wave acceleration spectra vary linearly with the compressive force on the tibia and may be used as proxies for the compressive force. We test the validity of this technique using a proof-of-concept wearable system that generates flexural waves via a skin-mounted mechanical transducer and measures the spectra of these waves using a skin-mounted accelerometer. In agreement with beam theory, data from 9 participants demonstrate linear relationships between tibial compressive force and spectral peak location, with Pearson correlation coefficients $r=0.82 - 0.99$ (mean $r=0.93$) for medial-lateral swaying and $r=0.81 - 0.98$ (mean $r=0.93$) for walking trials. This flexural wave-based technique could give rise to a new class of wearable sensors for non-invasive physiological bone load monitoring and measurement, impacting research in human locomotion and sports medicine.

2412.01836 2026-06-18 q-bio.NC 80%

Eye dominance and testing order effects in the circularly-oriented macular pigment optical density measurements that rely on the perception of structured light-based stimuli

圆周定向视网膜色素密度测量中眼主导性与测试顺序效应的影响

Mukhit Kulmaganbetov, Taranjit Singh, Dmitry Pushin, Pinki Chahal, David Cory, Davis Garrad, Connor Kapahi, Melanie Mungalsingh, Iman Salehi, Andrew Silva, Ben Thompson, Zhangting Wang, Dusan Sarenac

专题命中 健康监测 :研究视网膜色素密度测量中的影响因素

AI总结 研究探讨了基于结构化光刺激的视网膜色素密度测量中,眼主导性和测试顺序对感知的影响,发现两者与测量结果无显著相关性,为未来临床应用奠定基础。

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AI中文摘要

心理物理学中结构化光刺激的辨别可能在筛查各种视网膜疾病,包括退行性视网膜病变中发挥作用。圆周定向视网膜色素密度(coMPOD)通过结构化光诱导的视网膜现象辨别性能计算,可能揭示视网膜健康的新功能生物标志物。本研究探讨了眼主导性和测试顺序对结构化光刺激感知的潜在影响,这些因素可能影响基于结构化光技术的筛查测试的灵敏度。28名18-38岁受试者在全面眼科检查后参与研究。心理物理任务中,多种具有多方位条纹旋转特定时间频率的结构化光刺激被投射到受试者视网膜上。通过遮蔽视网膜中央区域,测量了刺激可感知区域的视网膜等距(R)。使用考虑结构化光刺激不同空间密度和时间频率的感知阈值测量的时空敏感性模型,计算了每个受试者的coMPOD轮廓斜率(a值)。眼主导性和测试顺序效应的皮尔逊相关系数为r=0.8(p<0.01)。两种因素的布兰-阿尔曼图显示零偏倚。结果表明,两眼的测量结果可重复,暗示眼主导性和测试顺序对结构化光刺激感知影响较小。结果为未来探索结构化光工具在眼科临床应用中的实用价值奠定了基础。

英文摘要

Psychophysical discrimination of structured light (SL) stimuli may be useful in screening for various macular disorders, including degenerative macular diseases. The circularly-oriented macular pigment optical density (coMPOD), calculated from the discrimination performance of SL-induced entoptic phenomena, may reveal a novel functional biomarker of macular health. In this study, we investigated the potential influence of eye dominance and testing order effects on SL-based stimulus perception, factors that potentially influence the sensitivity of screening tests based on SL technology. A total of 28 participants (aged 18-38 years) were selected for the study after undergoing a comprehensive eye examination. A psychophysical task was performed where various SL-based entoptic images with multiple azimuthal fringes rotating with a specific temporal frequency were projected onto the participants' retinas. By occluding the central areas of entoptic images, we measured the retinal eccentricity ($R$) of the perceivable area of the stimuli. The slope of the coMPOD profile ($a$-value) was calculated for each participant using a spatiotemporal sensitivity model that takes into account the perceptual threshold measurements of structured light stimuli with varying spatial densities and temporal frequencies. The Pearson correlation coefficient between eye dominance and testing order effects was $r=0.8$ ($p<0.01$). The Bland-Altman plots for both factors indicated zero bias. The results indicate repeatable measurements for both eyes, implying minimal impact from eye dominance and testing order on SL-based stimulus perception. The results provide a foundation for future studies exploring the clinical utility of SL tools in eye health.

2606.19102 2026-06-18 eess.SP 新提交 55%

Decentralized Power Control for Over-the-Air Computation with Phase Noise

含相位噪声的空中计算去中心化功率控制

Martin Dahl, Erik G. Larsson

专题命中 健康监测 :研究空中计算功率控制,可应用于医疗物联网

AI总结 针对空中计算中信道估计仅本地可用的问题,提出基于截断信道反转的分布式功率控制方案,给出近似闭式解和精确数值解法,证明均方误差与接收天线数无关,并揭示其与聚合相位误差的关系。

Comments SPAWC 2026

详情
AI中文摘要

相干空中计算(OAC)需要上行信道估计。当使用校准互易性进行信道估计时,估计值仅对设备本地可用。这对预编码和解码构成了挑战,因为无法集中协调。为此,我们使用截断信道反转(TCI),并提出了一个近似闭式解和一个精确数值求解器来优化TCI参数。重要的是,我们证明了所提出的TCI方案在均方误差(MSE)方面与接收天线数量无关。此外,我们的分析揭示了MSE与设备间预期聚合相位误差之间的明确联系,这有助于理解OAC的可扩展性。最后,与先前工作中使用全局可用无误差信道估计的参考方法进行的仿真比较表明,所提出的方法在某些条件下甚至优于这些参考方法的MSE。

英文摘要

Estimation of uplink channels is required for coherent over-the-air computation (OAC). When channel estimation is done using calibrated reciprocity, the estimates are only available locally to the devices. This poses a challenge for precoding and decoding, which cannot be coordinated centrally. To this end we use truncated channel inversion (TCI) and propose an approximate closed form solution and an exact numerical solver to optimize the TCI parameters. Importantly, we prove that the proposed TCI scheme is independent of the number of receiver antennas in terms of mean-square-error (MSE). Furthermore, our analysis reveals a clear connection between the MSE and expected aggregate phase error across devices which gives insight to the scalability of OAC. Finally, simulations with comparisons to reference methods from prior work with globally available error-free channel estimates show that proposed is close, even outperforming these references in MSE under some conditions.

2606.18564 2026-06-18 cs.SD eess.SP 新提交 55%

Reference-Based Recursive Least-Squares Mitigation of Real Interference in Stereo Audio Recordings

基于参考的递归最小二乘法在立体声音频录音中抑制真实干扰

Necati Kagan Erkek, Y. Ugur Ozcan

发表机构 * Telecommunications Engineering, Department of Electronics, Information(电信工程系,电子与信息系)

专题命中 健康监测 :自适应干扰消除用于音频录音,可能医疗应用

AI总结 针对受真实火车噪声和环境背景污染的立体声音频,采用多参考递归最小二乘(RLS)估计器进行自适应干扰消除,通过参考信号估计干扰分量并减去,后接低通后置滤波器,有效降低参考相关性达30.6-34.1 dB。

Comments 7 pages

详情
AI中文摘要

评估了基于参考的自适应干扰消除方法,用于受真实火车噪声和环境背景污染的立体声音频录音。观测信号被建模为干净的立体声节目受到由外部声源通过未知传播路径产生的加性干扰污染。第二个立体声录音,代表同一物理噪声源的另一个滤波观测,被用作多参考递归最小二乘(RLS)估计器的参考输入。估计的火车干扰分量从含噪音频中减去,随后经过有限冲激响应低通后置滤波器。在相同算法参数下处理了三个74.01秒、采样率为11.025 kHz的真实音频序列。由于没有干净的参考真值,性能通过无参考指标评估:波形行为、Welch谱估计、RMS变化以及与参考的残差归一化相关性。每个参考通道使用30个抽头、15个反因果抽头和遗忘因子0.999,最大参考相关性从处理前的0.386--0.832降低到处理后的0.011--0.016。相应的相关性比降低约30.6--34.1 dB,而输出RMS根据片段和立体声通道减少1.8--4.8 dB。结果表明,当存在相关参考录音时,真实火车干扰(包括环境声学效应)可以被显著衰减。

英文摘要

Reference-based adaptive interference cancellation is evaluated for stereo audio recordings corrupted by real train noise and environmental background. The observed signal is modeled as a clean stereo program contaminated by an additive disturbance generated by an external acoustic source through unknown propagation paths. A second stereo recording, representing another filtered observation of the same physical noise source, is used as the reference input of a multi-reference recursive least-squares (RLS) estimator. The estimated train-interference component is subtracted from the noisy audio and followed by a finite-impulse-response low-pass postfilter. Three 74.01 s real audio sequences sampled at 11.025 kHz are processed under identical algorithmic parameters. Since clean ground truth is not available, performance is assessed with no-reference indicators: waveform behavior, Welch spectral estimates, RMS change, and residual normalized correlation with the reference. With 30 taps per reference channel, 15 anti-causal taps, and forgetting factor 0.999, the maximum reference correlation is reduced from 0.386--0.832 before processing to 0.011--0.016 after processing. The corresponding correlation-ratio reduction is approximately 30.6--34.1 dB, while the output RMS decreases by 1.8--4.8 dB depending on section and stereo channel. The results demonstrate that real train interference, including environmental acoustic effects, can be substantially attenuated when a correlated reference recording is available.