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Novel Digital Biomarkers for Fine Motor Skills Assessment in Psoriatic Arthritis: The DaktylAct Touch-Based Serious Game Approach 用于评估银屑病关节炎患者精细运动技能的新型数字生物标记物:DaktylAct 基于触摸的严肃游戏方法
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-29 DOI: 10.1109/JBHI.2024.3487785
Eleni Vasileiou;Sofia B. Dias;Stelios Hadjidimitriou;Vasileios Charisis;Nikolaos Karagkiozidis;Stavros Malakoudis;Patty de Groot;Stelios Andreadis;Vassilis Tsekouras;Georgios Apostolidis;Anastasia Matonaki;Thanos G. Stavropoulos;Leontios J. Hadjileontiadis
Psoriatic Arthritis (PsA) is a chronic, inflammatory disease affecting joints, substantially impacting patients' quality of life, with European guidelines for managing PsA emphasizing the importance of assessing hand function. Here, we present a set of novel digital biomarkers (dBMs) derived from a touchscreen-based serious game approach, DaktylAct, intended as a proxy, gamified, objective assessment of hand impairment, with emphasis on fine motor skills, caused by PsA. This is achieved by its design, where the user controls a cannon to aim at and hit targets using two finger pinch-in/out and wrist rotation gestures. In-game metrics (targets hit and score) and statistical features (mean, standard deviation) of gameplay actions (duration of gestures, applied pressure, and wrist rotation angle) produced during gameplay serve as informative dBMs. DaktylAct was tested on a cohort comprising 16 clinically verified PsA patients and nine healthy controls (HC). Correlation analysis demonstrated a positive correlation between average pinch-in duration and disease activity (DA) and a negative correlation between standard deviation of applied pressure during wrist rotation and joint inflammation. Logistic regression models achieved 83% and 91% classification performance discriminating HC from PsA patients with low DA (LDA) and PsA patients with and without joint inflammation, respectively. Results presented here are promising and create a proof-of-concept, paving the way for further validation in larger cohorts.
银屑病关节炎(PsA)是一种影响关节的慢性炎症性疾病,严重影响患者的生活质量,欧洲银屑病管理指南强调了评估手部功能的重要性。在这里,我们介绍了一套新型数字生物标记物(dBMs),这些标记物来自于基于触摸屏的严肃游戏 DaktylAct,该游戏旨在对 PsA 引起的手部损伤(重点是精细运动技能)进行代理、游戏化和客观的评估。该游戏的设计实现了这一目标,即用户通过两指捏进/捏出和手腕旋转手势来控制大炮瞄准并击中目标。在游戏过程中产生的游戏指标(击中的目标和得分)和游戏动作的统计特征(平均值、标准偏差)(手势持续时间、施加的压力和手腕旋转角度)可作为信息的 dBM。DaktylAct 测试对象包括 16 名临床确诊的 PsA 患者和 9 名健康对照组(HC)。相关性分析表明,平均掐入持续时间与疾病活动度(DA)呈正相关,手腕旋转时施加压力的标准偏差与关节炎症呈负相关。逻辑回归模型的分类性能分别达到了 83% 和 91%,可将 HC 与低 DA(LDA)PsA 患者以及有关节炎症和无关节炎症的 PsA 患者区分开来。本文介绍的结果很有希望,是一个概念验证,为在更大的群体中进一步验证铺平了道路。
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引用次数: 0
Attention-based q-space Deep Learning Generalized for Accelerated Diffusion Magnetic Resonance Imaging. 基于注意力的 q 空间深度学习泛化用于加速扩散磁共振成像。
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-29 DOI: 10.1109/JBHI.2024.3487755
Fangrong Zong, Zaimin Zhu, Jiayi Zhang, Xiaofeng Deng, Zhuangzhuang Li, Chuyang Ye, Yong Liu

Diffusion magnetic resonance imaging (dMRI) is a non-invasive method for capturing the microanatomical information of tissues by measuring the diffusion weighted signals along multiple directions, which is widely used in the quantification of microstructures. Obtaining microscopic parameters requires dense sampling in the q space, leading to significant time consumption. The most popular approach to accelerating dMRI acquisition is to undersample the q-space data, along with applying deep learning methods to reconstruct quantitative diffusion parameters. However, the reliance on a predetermined q-space sampling strategy often constrains traditional deep learning-based reconstructions. The present study proposed a novel deep learning model, named attention-based q-space deep learning (aqDL), to implement the reconstruction with variable q-space sampling strategies. The aqDL maps dMRI data from different scanning strategies onto a common feature space by using a series of Transformer encoders. The latent features are employed to reconstruct dMRI parameters via a multilayer perceptron. The performance of the aqDL model was assessed utilizing the Human Connectome Project datasets at varying undersampling numbers. To validate its generalizability, the model was further tested on two additional independent datasets. Our results showed that aqDL consistently achieves the highest reconstruction accuracy at various undersampling numbers, regardless of whether variable or predetermined q-space scanning strategies are employed. These findings suggest that aqDL has the potential to be used on general clinical dMRI datasets.

扩散磁共振成像(dMRI)是一种无创方法,通过测量沿多个方向的扩散加权信号来捕捉组织的微观解剖信息,广泛应用于微观结构的量化。获取微观参数需要在 q 空间进行密集采样,因此耗费大量时间。加速 dMRI 采集的最流行方法是对 q 空间数据进行欠采样,同时应用深度学习方法重建定量扩散参数。然而,对预定 q 空间采样策略的依赖往往限制了传统的基于深度学习的重建。本研究提出了一种新型深度学习模型,命名为基于注意力的q空间深度学习(aqDL),以实现可变q空间采样策略的重建。aqDL 通过使用一系列变换器编码器,将不同扫描策略的 dMRI 数据映射到一个共同的特征空间。潜特征通过多层感知器用于重建 dMRI 参数。aqDL 模型的性能是利用人类连接组计划数据集在不同的低采样率下进行评估的。为了验证其通用性,该模型还在另外两个独立数据集上进行了进一步测试。我们的结果表明,无论采用可变还是预定的 q 空间扫描策略,aqDL 都能在不同的取样不足数下始终获得最高的重建准确率。这些研究结果表明,aqDL 有潜力用于一般临床 dMRI 数据集。
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引用次数: 0
Avatar-Based Picture Exchange Communication System Enhancing Joint Attention Training for Children With Autism. 基于阿凡达的图片交换交流系统加强自闭症儿童的联合注意力训练
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-29 DOI: 10.1109/JBHI.2024.3487589
Yongjun Ren, Runze Liu, Huinan Sang, Xiaofeng Yu

Children with Autism Spectrum Disorder (ASD) often struggle with social communication and feel anxious in interactive situations. The Picture Exchange Communication System (PECS) is commonly used to enhance basic communication skills in children with ASD, but it falls short in reducing social anxiety during therapist interactions and in keeping children engaged. This paper proposes the use of virtual character technology alongside PECS training to address these issues. By integrating a virtual avatar, children's communication skills and ability to express needs can be gradually improved. This approach also reduces anxiety and enhances the interactivity and attractiveness of the training. After conducting a T-test, it was found that PECS assisted by a virtual avatar significantly improves children's focus on activities and enhances their behavioral responsiveness. To address the problem of poor accuracy of gaze estimation in unconstrained environments, this study further developed a visual feature-based gaze estimation algorithm, the three-channel gaze network (TCG-Net). It utilizes binocular images to refine the gaze direction and infer the primary focus from facial images. Our focus was on enhancing gaze tracking accuracy in natural environments, crucial for evaluating and improving Joint Attention (JA) in children during interactive processes.TCG-Net achieved an angular error of 4.0 on the MPIIGaze dataset, 5.0 on the EyeDiap dataset, and 6.8 on the RT-Gene dataset, confirming the effectiveness of our approach in improving gaze accuracy and the quality of social interactions.

患有自闭症谱系障碍(ASD)的儿童通常在社交沟通方面很吃力,在互动环境中会感到焦虑。图片交流沟通系统(PECS)通常用于提高自闭症儿童的基本沟通技能,但它在减少治疗师互动过程中的社交焦虑和保持儿童参与方面存在不足。本文建议在进行 PECS 训练的同时使用虚拟人物技术来解决这些问题。通过整合虚拟化身,可以逐步提高儿童的沟通技能和表达需求的能力。这种方法还能减少焦虑,增强培训的互动性和吸引力。经过 T 检验发现,虚拟化身辅助的 PECS 能显著提高儿童对活动的专注度,并增强他们的行为反应能力。针对无约束环境下注视估计准确性差的问题,本研究进一步开发了一种基于视觉特征的注视估计算法--三通道注视网络(TCG-Net)。它利用双目图像细化注视方向,并从面部图像推断主要焦点。TCG-Net 在 MPIIGaze 数据集上的角度误差为 4.0,在 EyeDiap 数据集上的角度误差为 5.0,在 RT-Gene 数据集上的角度误差为 6.8,这证实了我们的方法在提高注视准确性和社交互动质量方面的有效性。
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引用次数: 0
A Nuclei-Focused Strategy for Automated Histopathology Grading of Renal Cell Carcinoma. 肾细胞癌组织病理学自动分级的核聚焦策略
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-28 DOI: 10.1109/JBHI.2024.3487004
Hyunjun Cho, Dongjin Shin, Kwang-Hyun Uhm, Sung-Jea Ko, Yosep Chong, Seung-Won Jung

The rising incidence of kidney cancer underscores the need for precise and reproducible diagnostic methods. In particular, renal cell carcinoma (RCC), the most prevalent type of kidney cancer, requires accurate nuclear grading for better prognostic prediction. Recent advances in deep learning have facilitated end-to-end diagnostic methods using contextual features in histopathological images. However, most existing methods focus only on image-level features or lack an effective process for aggregating nuclei prediction results, limiting their diagnostic accuracy. In this paper, we introduce a novel framework, Nuclei feature Assisted Patch-level RCC grading (NuAP-RCC), that leverages nuclei-level features for enhanced patch-level RCC grading. Our approach employs a nuclei-level RCC grading network to extract grade-aware features, which serve as node features in a graph. These node features are aggregated using graph neural networks to capture the morphological characteristics and distributions of the nuclei. The aggregated features are then combined with global image-level features extracted by convolutional neural networks, resulting in a final feature for accurate RCC grading. In addition, we present a new dataset for patch-level RCC grading. Experimental results demonstrate the superior accuracy and generalizability of NuAP-RCC across datasets from different medical institutions, achieving a 6.15% improvement in accuracy over the second-best model on the USM-RCC dataset.

肾癌发病率的上升凸显了对精确、可重复诊断方法的需求。特别是肾细胞癌(RCC)这种最常见的肾癌类型,需要准确的核分级以更好地预测预后。深度学习的最新进展促进了利用组织病理学图像中的上下文特征进行端到端诊断的方法。然而,大多数现有方法仅关注图像级特征,或缺乏有效的核分级预测结果汇总流程,从而限制了其诊断准确性。在本文中,我们介绍了一个新颖的框架--细胞核特征辅助斑块级 RCC 分级(NuAP-RCC),该框架利用细胞核级特征来增强斑块级 RCC 分级。我们的方法利用核级 RCC 分级网络提取等级感知特征,这些特征作为图中的节点特征。这些节点特征通过图神经网络进行聚合,以捕捉细胞核的形态特征和分布。然后将聚合特征与卷积神经网络提取的全局图像级特征相结合,最终形成准确的 RCC 分级特征。此外,我们还提出了一个用于斑块级 RCC 分级的新数据集。实验结果表明,NuAP-RCC 在不同医疗机构的数据集上都具有卓越的准确性和通用性,在 USM-RCC 数据集上,其准确性比排名第二的模型提高了 6.15%。
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引用次数: 0
An On-Board Executable Multi-Feature Transfer-Enhanced Fusion Model for Three-Lead EEG Sensor-Assisted Depression Diagnosis 用于三导联脑电图传感器辅助抑郁症诊断的板载可执行多特征转移增强融合模型。
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-28 DOI: 10.1109/JBHI.2024.3487012
Fuze Tian;Haojie Zhang;Yang Tan;Lixian Zhu;Lin Shen;Kun Qian;Bin Hu;Björn W. Schuller;Yoshiharu Yamamoto
The development of affective computing and medical electronic technologies has led to the emergence of Artificial Intelligence (AI)-based methods for the early detection of depression. However, previous studies have often overlooked the necessity for the AI-assisted diagnosis system to be wearable and accessible in practical scenarios for depression recognition. In this work, we present an on-board executable multi-feature transfer-enhanced fusion model for our custom-designed wearable three-lead Electroencephalogram (EEG) sensor, based on EEG data collected from 73 depressed patients and 108 healthy controls. Experimental results show that the proposed model exhibits low-computational complexity (65.0 K parameters), promising Floating-Point Operations (FLOPs) performance (25.6 M), real-time processing (1.5 s/execution), and low power consumption (320.8 mW). Furthermore, it requires only 202.0 KB of Random Access Memory (RAM) and 279.6 KB of Read-Only Memory (ROM) when deployed on the EEG sensor. Despite its low computational and spatial complexity, the model achieves a notable classification accuracy of 95.2%, specificity of 94.0%, and sensitivity of 96.9% under independent test conditions. These results underscore the potential of deploying the model on the wearable three-lead EEG sensor for assisting in the diagnosis of depression.
随着情感计算和医疗电子技术的发展,出现了基于人工智能(AI)的抑郁症早期检测方法。然而,以往的研究往往忽视了人工智能辅助诊断系统在实际抑郁症识别场景中可穿戴和可访问的必要性。在这项工作中,我们基于从 73 名抑郁症患者和 108 名健康对照者收集到的脑电图数据,为定制设计的可穿戴三导联脑电图(EEG)传感器提出了一个板载可执行多特征转移增强融合模型。实验结果表明,所提出的模型具有计算复杂度低(65.0 K 个参数)、浮点运算(FLOPs)性能好(26.6 M)、实时处理(1.5 s/执行)和功耗低(320.8 mW)等特点。此外,在脑电图传感器上部署时,它只需要 202.0 MB 的随机存取存储器 (RAM) 和 279.6 KB 的只读存储器 (ROM)。尽管该模型的计算和空间复杂度较低,但在独立测试条件下,其分类准确率高达 95.2%,特异性高达 96.9%,灵敏度高达 94.0%。这些结果凸显了在可穿戴三导联脑电图传感器上部署该模型以辅助诊断抑郁症的潜力。
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引用次数: 0
Attention Transfer in Heterogeneous Networks Fusion for Drug Repositioning. 异构网络融合中的注意力转移,促进药物重新定位。
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-28 DOI: 10.1109/JBHI.2024.3486730
Xinguo Lu, Fengxu Sun, Jinxin Li, Jingjing Ruan

Computational drug repositioning which accelerates the process of drug development is able to reduce the cost in terms of time and money dramatically which brings promising and broad perspectives for the treatment of complex diseases. Heterogeneous networks fusion has been proposed to improve the performance of drug repositioning. Due to the difference and the specificity including the network structure and the biological function among different biological networks, it poses serious challenge on how to represent drug features and construct drug-disease associations in drug repositioning. Therefore, we proposed a novel drug repositioning method (ATDR) that employed attention transfer across different networks constructed by the deeply represented features integrated from biological networks to implement the disease-drug association prediction. Specifically, we first implemented the drug feature characterization with the graph representation of random surfing for different biological networks, respectively. Then, the drug network of deep feature representation was constructed with the aggregated drug informative features acquired by the multi-modal deep autoencoder on heterogeneous networks. Subsequently, we accomplished the drug-disease association prediction by transferring attention from the drug network to the drug-disease interaction network. We performed comprehensive experiments on different datasets and the results illustrated the outperformance of ATDR compared with other baseline methods and the predicted potential drug-disease interactions could aid in the drug development for disease treatments.

计算药物重新定位可加速药物开发过程,大幅降低时间和金钱成本,为治疗复杂疾病带来了广阔的前景。为了提高药物重新定位的性能,有人提出了异构网络融合。由于不同生物网络在网络结构和生物功能等方面存在差异和特异性,如何在药物重新定位中表示药物特征和构建药物-疾病关联是一个严峻的挑战。因此,我们提出了一种新颖的药物重新定位方法(ATDR),该方法利用从生物网络中整合的深度表征特征所构建的不同网络间的注意力转移来实现疾病-药物关联预测。具体来说,我们首先针对不同的生物网络,分别用随机冲浪的图表示法实现了药物特征表征。然后,利用多模态深度自动编码器在异构网络上获取的聚合药物信息特征,构建深度特征表示的药物网络。随后,我们将注意力从药物网络转移到药物-疾病交互网络,从而完成了药物-疾病关联预测。我们在不同的数据集上进行了全面的实验,结果表明 ATDR 的性能优于其他基线方法,预测出的潜在药物-疾病相互作用有助于疾病治疗药物的开发。
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引用次数: 0
Gesture Recognition through Mechanomyogram Signals: An Adaptive Framework for Arm Posture Variability. 通过机械肌动图信号识别手势:针对手臂姿势变化的自适应框架
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-28 DOI: 10.1109/JBHI.2024.3483428
Panipat Wattanasiri, Samuel Wilson, Weiguang Huo, Ravi Vaidyanathan

In hand gesture recognition, classifying gestures across multiple arm postures is challenging due to the dynamic nature of muscle fibers and the need to capture muscle activity through electrical connections with the skin. This paper presents a gesture recognition architecture addressing the arm posture challenges using an unsupervised domain adaptation technique and a wearable mechanomyogram (MMG) device that does not require electrical contact with the skin. To deal with the transient characteristics of muscle activities caused by changing arm posture, Continuous Wavelet Transform (CWT) combined with Domain-Adversarial Convolutional Neural Networks (DACNN) were used to extract MMG features and classify hand gestures. DACNN was compared with supervised trained classifiers and shown to achieve consistent improvement in classification accuracies over multiple arm postures. With less than 5 minutes of setup time to record 20 examples per gesture in each arm posture, the developed method achieved an average prediction accuracy of 87.43% for classifying 5 hand gestures in the same arm posture and 64.29% across 10 different arm postures. When further expanding the MMG segmentation window from 200 ms to 600 ms to extract greater discriminatory information at the expense of longer response time, the intraposture and inter-posture accuracies increased to 92.32% and 71.75%. The findings demonstrate the capability of the proposed method to improve generalization throughout dynamic changes caused by arm postures during non-laboratory usages and the potential of MMG to be an alternative sensor with comparable performance to the widely used electromyogram (EMG) gesture recognition systems.

在手势识别中,由于肌肉纤维的动态特性,以及需要通过与皮肤的电连接来捕捉肌肉活动,因此对多种手臂姿势的手势进行分类具有挑战性。本文提出了一种手势识别架构,利用无监督领域适应技术和无需与皮肤电接触的可穿戴机械肌电图(MMG)设备来应对手臂姿势挑战。为了处理手臂姿势变化引起的肌肉活动的瞬态特征,我们采用了连续小波变换(CWT)与域对抗卷积神经网络(DACNN)相结合的方法来提取 MMG 特征并对手势进行分类。DACNN 与经过监督训练的分类器进行了比较,结果表明,DACNN 在多种手臂姿势的分类准确率上都有持续的提高。在不到 5 分钟的设置时间内记录每个手臂姿势下每个手势的 20 个示例,所开发的方法在对同一手臂姿势下的 5 个手势进行分类时,平均预测准确率达到 87.43%,在对 10 个不同手臂姿势进行分类时,平均预测准确率达到 64.29%。当进一步将 MMG 分割窗口从 200 毫秒扩大到 600 毫秒,以更长的响应时间为代价提取更多的判别信息时,姿态内和姿态间的准确率分别提高到 92.32% 和 71.75%。这些研究结果表明,所提出的方法有能力在非实验室使用过程中改善手臂姿势引起的动态变化的通用性,MMG 有潜力成为与广泛使用的肌电图(EMG)手势识别系统性能相当的替代传感器。
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引用次数: 0
Head-Mounted Displays in Context-Aware Systems for Open Surgery: A State-of-the-Art Review. 开放手术情境感知系统中的头戴式显示器:最新技术回顾
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-28 DOI: 10.1109/JBHI.2024.3485023
Mingxiao Tu, Hoijoon Jung, Jinman Kim, Andre Kyme

Surgical context-aware systems (SCAS), which leverage real-time data and analysis from the operating room to inform surgical activities, can be enhanced through the integration of head-mounted displays (HMDs). Rather than user-agnostic data derived from conventional, and often static, external sensors, HMD-based SCAS relies on dynamic user-centric sensing of the surgical context. The analyzed context-aware information is then augmented directly into a user's field of view via augmented reality (AR) to directly improve their task and decision-making capability. This stateof-the-art review complements previous reviews by exploring the advancement of HMD-based SCAS, including their development and impact on enhancing situational awareness and surgical outcomes in the operating room. The survey demonstrates that this technology can mitigate risks associated with gaps in surgical expertise, increase procedural efficiency, and improve patient outcomes. We also highlight key limitations still to be addressed by the research community, including improving prediction accuracy, robustly handling data heterogeneity, and reducing system latency.

手术情境感知系统(SCAS)可利用手术室的实时数据和分析为手术活动提供信息,通过集成头戴式显示器(HMD)可增强该系统的功能。基于 HMD 的 SCAS 依赖于以用户为中心对手术环境的动态感知,而不是从传统的(通常是静态的)外部传感器中获取与用户无关的数据。分析后的情境感知信息通过增强现实技术(AR)直接增强到用户的视野中,从而直接提高用户的任务和决策能力。这篇最新综述对之前的综述进行了补充,探讨了基于 HMD 的 SCAS 的发展,包括其发展及其对增强手术室中的态势感知和手术效果的影响。调查表明,这项技术可以降低与手术专业知识差距相关的风险,提高手术效率,改善患者预后。我们还强调了研究界仍需解决的主要局限性,包括提高预测准确性、稳健处理数据异质性和减少系统延迟。
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引用次数: 0
scSwinTNet: A Cell Type Annotation Method for Large-Scale Single-Cell RNA-Seq Data Based on Shifted Window Attention. scSwinTNet:基于移窗注意力的大规模单细胞 RNA-Seq 数据的细胞类型注释方法
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-28 DOI: 10.1109/JBHI.2024.3487174
Huanhuan Dai, Xiangyu Meng, Zhiyi Pan, Qing Yang, Haonan Song, Yuan Gao, Xun Wang

The annotation of cell types based on single-cell RNA sequencing (scRNA-seq) data is a critical downstream task in single-cell analysis, with significant implications for a deeper understanding of biological processes. Most analytical methods cluster cells by unsupervised clustering, which requires manual annotation for cell type determination. This procedure is time-overwhelming and non-repeatable. To accommodate the exponential growth of sequencing cells, reduce the impact of data bias, and integrate large-scale datasets for further improvement of type annotation accuracy, we proposed scSwinTNet. It is a pre-trained tool for annotating cell types in scRNA-seq data, which uses self-attention based on shifted windows and enables intelligent information extraction from gene data. We demonstrated the effectiveness and robustness of scSwinTNet by using 399 760 cells from human and mouse tissues. To the best of our knowledge, scSwinTNet is the first model to annotate cell types in scRNA-seq data using a pre-trained shifted window attention-based model. It does not require a priori knowledge and accurately annotates cell types without manual annotation.

根据单细胞 RNA 测序(scRNA-seq)数据标注细胞类型是单细胞分析的一项关键下游任务,对深入了解生物过程具有重要意义。大多数分析方法都是通过无监督聚类对细胞进行聚类,这需要人工标注来确定细胞类型。这一过程耗时长,且不可重复。为了适应细胞测序的指数级增长,减少数据偏差的影响,并整合大规模数据集以进一步提高类型标注的准确性,我们提出了 scSwinTNet。它是一种用于在 scRNA-seq 数据中注释细胞类型的预训练工具,利用基于移位窗口的自注意,实现了从基因数据中的智能信息提取。我们利用来自人类和小鼠组织的 399 760 个细胞证明了 scSwinTNet 的有效性和稳健性。据我们所知,scSwinTNet 是第一个使用预先训练好的基于移窗注意力的模型来注释 scRNA-seq 数据中细胞类型的模型。它不需要先验知识,无需人工标注即可准确标注细胞类型。
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引用次数: 0
Belief-Rule-Based System with Self-organizing and Multi-temporal Modeling for Sensor-based Human Activity Recognition. 基于自组织和多时态建模的信念规则系统,用于基于传感器的人类活动识别。
IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Pub Date : 2024-10-24 DOI: 10.1109/JBHI.2024.3485871
Long-Hao Yang, Fei-Fei Ye, Chris Nugent, Jun Liu, Ying-Ming Wang

Smart environment is an efficient and cost- effective way to afford intelligent supports for the elderly people. Human activity recognition (HAR) is a crucial aspect of the research field of smart environments, and it has attracted widespread attention lately. The goal of this study is to develop an effective sensor-based HAR model based on the belief-rule-based system (BRBS), which is one of representative rule-based expert systems. Specially, a new belief rule base (BRB) modeling approach is proposed by taking into account the self- organizing rule generation method and the multi-temporal rule representation scheme, in order to address the problem of combination explosion that existed in the traditional BRB modelling procedure and the time correlation found in continuous sensor data in chronological order. The new BRB modeling approach is so called self-organizing and multi-temporal BRB (SOMT-BRB) modeling procedure. A case study is further deducted to validate the effectiveness of the SOMT-BRB modeling procedure. By comparing with some conventional BRBSs and classical activity recognition models, the results show a significant improvement of the BRBS in terms of the number of belief rules, modelling efficiency, and activity recognition accuracy.

智能环境是为老年人提供智能支持的一种高效、低成本的方式。人类活动识别(HAR)是智能环境研究领域的一个重要方面,近年来引起了广泛关注。本研究的目标是在基于信念规则的系统(BRBS)基础上开发一种有效的基于传感器的人类活动识别模型。特别是,为了解决传统基于信念规则的系统建模过程中存在的组合爆炸问题,以及按时间顺序排列的连续传感器数据中存在的时间相关性问题,本研究结合自组织规则生成方法和多时态规则表示方案,提出了一种新的基于信念规则的系统(BRBS)建模方法。新的 BRB 建模方法就是所谓的自组织和多时态 BRB(SOMT-BRB)建模程序。通过案例研究进一步验证了 SOMT-BRB 建模程序的有效性。通过与一些传统 BRBS 和经典活动识别模型进行比较,结果表明 BRBS 在信念规则数量、建模效率和活动识别准确率方面都有显著提高。
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IEEE Journal of Biomedical and Health Informatics
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