Neural Networks, Computer

神经网络,计算机
  • 文章类型: Journal Article
    在海马中观察到嵌套在θ节律中的伽马振荡,假设在顺序情景记忆中发挥作用,即,记忆和检索及时展开的事件。在这项工作中,我们提出了一个基于神经质量的原始神经计算模型,它通过利用theta-gamma代码来模拟海马中事件序列的编码以及随后的检索。该模型基于三层结构,其中各个单元以伽玛节奏振荡,并编码情节的各个特征。第一层(前额叶皮层中的工作记忆)在记忆中保持提示,直到出现新信号。第二层(CA3单元)实现自动关联存储器,利用兴奋性和抑制性塑料突触从单个特征恢复整个发作。该层中的单位被来自外部来源(隔膜或Papez回路)的theta节律抑制。第三层(CA1单元)与上一层实现异质关联网,能够从第一个事件中恢复一系列事件。在编码阶段,模拟高乙酰胆碱水平,网络使用Hebbian(同步)和反Hebbian(去同步)规则进行训练。在检索过程中(低乙酰胆碱),网络可以使用嵌套在theta节奏内的伽马振荡从初始线索中正确恢复序列。此外,在高噪音中,与环境隔离的网络模拟了一种精神错乱的状态,随机复制以前的序列。有趣的是,在模拟睡眠的状态下,随着噪音的增加和突触的减少,网络可以通过创造性地组合序列来“梦想”,利用不同情节共有的特征。最后,非理性行为(错误叠加各种情节中的特征,像“妄想”)发生在快速抑制性突触的病理性减少之后。该模型可以代表一种简单而创新的工具,以帮助机械地理解不同精神状态下的theta-gamma代码。
    Gamma oscillations nested in a theta rhythm are observed in the hippocampus, where are assumed to play a role in sequential episodic memory, i.e., memorization and retrieval of events that unfold in time. In this work, we present an original neurocomputational model based on neural masses, which simulates the encoding of sequences of events in the hippocampus and subsequent retrieval by exploiting the theta-gamma code. The model is based on a three-layer structure in which individual Units oscillate with a gamma rhythm and code for individual features of an episode. The first layer (working memory in the prefrontal cortex) maintains a cue in memory until a new signal is presented. The second layer (CA3 cells) implements an auto-associative memory, exploiting excitatory and inhibitory plastic synapses to recover an entire episode from a single feature. Units in this layer are disinhibited by a theta rhythm from an external source (septum or Papez circuit). The third layer (CA1 cells) implements a hetero-associative net with the previous layer, able to recover a sequence of episodes from the first one. During an encoding phase, simulating high-acetylcholine levels, the network is trained with Hebbian (synchronizing) and anti-Hebbian (desynchronizing) rules. During retrieval (low-acetylcholine), the network can correctly recover sequences from an initial cue using gamma oscillations nested inside the theta rhythm. Moreover, in high noise, the network isolated from the environment simulates a mind-wandering condition, randomly replicating previous sequences. Interestingly, in a state simulating sleep, with increased noise and reduced synapses, the network can \"dream\" by creatively combining sequences, exploiting features shared by different episodes. Finally, an irrational behavior (erroneous superimposition of features in various episodes, like \"delusion\") occurs after pathological-like reduction in fast inhibitory synapses. The model can represent a straightforward and innovative tool to help mechanistically understand the theta-gamma code in different mental states.
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  • 文章类型: Journal Article
    在生物信息学中,仅根据其氨基酸序列了解蛋白质的功能是一项至关重要但复杂的任务。传统上,事实证明,这一挑战是困难的。然而,近年来见证了深度学习作为一种强大工具的兴起,在蛋白质功能预测方面取得了显著成功。他们的优势在于他们能够自动从蛋白质序列中学习信息特征,然后可以用来预测蛋白质的功能。这项研究建立在这些进步的基础上,提出了一个新的模型:CNN-CBAM+BiGRU。它包含一个卷积块注意模块(CBAM)与BiGRU。CBAM充当聚光灯,指导CNN专注于蛋白质数据中信息最丰富的部分,导致更准确的特征提取。BiGRU,一种循环神经网络(RNN),擅长捕捉蛋白质序列中的远程依赖关系,这对于准确的函数预测至关重要。所提出的模型整合了CNN-CBAM和BiGRU的优势。这项研究的发现,通过实验验证,展示这种组合方法的有效性。对于人类数据集,对于细胞成分,建议的方法优于CNN-BIGRU+ATT模型+1.0%,+1.1%的分子功能,生物过程+0.5%。对于酵母数据集,对于细胞成分,建议的方法优于CNN-BIGRU+ATT模型+2.4%,+1.2%的分子功能,生物过程+0.6%。
    Understanding a protein\'s function based solely on its amino acid sequence is a crucial but intricate task in bioinformatics. Traditionally, this challenge has proven difficult. However, recent years have witnessed the rise of deep learning as a powerful tool, achieving significant success in protein function prediction. Their strength lies in their ability to automatically learn informative features from protein sequences, which can then be used to predict the protein\'s function. This study builds upon these advancements by proposing a novel model: CNN-CBAM+BiGRU. It incorporates a Convolutional Block Attention Module (CBAM) alongside BiGRUs. CBAM acts as a spotlight, guiding the CNN to focus on the most informative parts of the protein data, leading to more accurate feature extraction. BiGRUs, a type of Recurrent Neural Network (RNN), excel at capturing long-range dependencies within the protein sequence, which are essential for accurate function prediction. The proposed model integrates the strengths of both CNN-CBAM and BiGRU. This study\'s findings, validated through experimentation, showcase the effectiveness of this combined approach. For the human dataset, the suggested method outperforms the CNN-BIGRU+ATT model by +1.0 % for cellular components, +1.1 % for molecular functions, and +0.5 % for biological processes. For the yeast dataset, the suggested method outperforms the CNN-BIGRU+ATT model by +2.4 % for the cellular component, +1.2 % for molecular functions, and +0.6 % for biological processes.
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  • 文章类型: Journal Article
    背景:从骨骼中确定性别对于法医学和人类学非常重要。下颌骨被高度重视,因为它是最坚固的,头骨中最大和最二形的骨头。
    目的:我们在这项研究中的目的是通过下颌舌骨的形态测量来估计性别,下颌骨上的一个重要结构,通过使用机器学习算法和人工神经网络。
    方法:通过回顾性扫描从口腔,牙科和颌面放射学,牙科学院,本大学。将以医学数字成像和通信(DICOM)格式扫描的图像传输到RadiAntDICOMViewer(版本:2020.2)。通过使用程序的3D体积渲染控制台将图像转换为3-D格式。根据下颌舌,从这些3-D图像中双侧测量了八个人体测量参数。
    结果:分析的机器学习算法结果表明,随机森林和高斯朴素贝叶斯算法的最高精度为0.88。其他参数的准确率介于0.78和0.88之间。
    结论:作为研究的结果,据认为,以下颌舌骨为中心的形态测量可用于性别确定以及骨盆和头骨等骨骼,因为它们被发现是高度准确的。这项研究还提供了有关土耳其社会中lingula根据性别的解剖位置的信息。结果对口腔牙科医生来说很重要,人类学家,还有法医专家.
    BACKGROUND: Sex determination from the bones is of great importance for forensic medicine and anthropology. The mandible is highly valued because it is the strongest, largest and most dimorphic bone in the skull.
    OBJECTIVE: Our aim in this study is gender estimation with morphometric measurements taken from mandibular lingula, an important structure on the mandible, by using machine learning algorithms and artificial neural networks.
    METHODS: Cone beam computed tomography images of the mandibular lingula were obtained by retrospective scanning from the Picture Archiving Communication Systems of the Department of Oral, Dental and Maxillofacial Radiology, Faculty of Dentistry, İnönü University. Images scanned in Digital Imaging and Communications in Medicine (DICOM) format were transferred to RadiAnt DICOM Viewer (Version: 2020.2). The images were converted to 3-D format by using the 3D Volume Rendering console of the program. Eight anthropometric parameters were measured bilaterally from these 3-D images based on the mandibular lingula.
    RESULTS: The results of the machine learning algorithms analyzed showed that the highest accuracy was 0.88 with Random Forest and Gaussian Naive Bayes algorithm. Accuracy rates of other parameters ranged between 0.78 and 0.88.
    CONCLUSIONS: As a result of the study, it is thought that mandibular lingula-centered morphometric measurements can be used for gender determination as well as bones such as the pelvis and skull as they were found to be highly accurate. This study also provides information on the anatomical position of the lingula according to gender in Turkish society. The results can be important for oral-dental surgeons, anthropologists, and forensic experts.
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  • 文章类型: Journal Article
    前列腺癌是男性中最常见和最致命的疾病之一,且其早期诊断可对治疗过程产生重大影响,预防死亡。由于它在早期没有明显的临床症状,很难诊断。此外,专家在分析磁共振图像方面的分歧也是一个重大挑战。近年来,各种研究表明,深度学习,尤其是卷积神经网络,已经成功地出现在机器视觉中(特别是在医学图像分析中)。在这项研究中,在多参数磁共振图像上使用了一种深度学习方法,研究了临床和病理数据对模型准确性的协同作用。数据是从德黑兰的Trita医院收集的,其中包括343例患者(在该过程中使用了数据增强和学习迁移方法).在设计的模型中,使用四个独立的ResNet50深度卷积网络分析了四种不同类型的图像,并将其提取的特征转移到完全连接的神经网络,并与临床和病理特征相结合。在没有临床和病理数据的模型中,最高准确率达到88%,但是通过添加这些数据,准确度提高到96%,临床和病理资料对诊断的准确性有显著影响。
    Prostate cancer is one of the most common and fatal diseases among men, and its early diagnosis can have a significant impact on the treatment process and prevent mortality. Since it does not have apparent clinical symptoms in the early stages, it is difficult to diagnose. In addition, the disagreement of experts in the analysis of magnetic resonance images is also a significant challenge. In recent years, various research has shown that deep learning, especially convolutional neural networks, has appeared successfully in machine vision (especially in medical image analysis). In this research, a deep learning approach was used on multi-parameter magnetic resonance images, and the synergistic effect of clinical and pathological data on the accuracy of the model was investigated. The data were collected from Trita Hospital in Tehran, which included 343 patients (data augmentation and learning transfer methods were used during the process). In the designed model, four different types of images are analyzed with four separate ResNet50 deep convolutional networks, and their extracted features are transferred to a fully connected neural network and combined with clinical and pathological features. In the model without clinical and pathological data, the maximum accuracy reached 88%, but by adding these data, the accuracy increased to 96%, which shows the significant impact of clinical and pathological data on the accuracy of diagnosis.
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  • 文章类型: Journal Article
    化学需氧量(COD)的测量在污水处理过程中非常重要。COD值在一定程度上反映了污水处理的效果和趋势,但是获得准确的数据需要很高的成本和劳动强度。TO1解决这个问题,提出了一种基于卷积神经网络-双向长短期记忆网络-注意力机制(CNN-BiLSTM-attention)算法的COD在线软测量方法。首先,通过分析厌氧-缺氧-氧化(A2O)废水处理过程中好氧池阶段的机理,初步确定了输入变量的选择范围,并对采集的样本数据集进行相关性分析。最后,pH值,溶解氧(DO),电导率(EC),和水温(T)被确定为COD软测量预测的输入变量。然后,基于CNN的特征提取能力和BiLSTM能够捕获时间序列数据中的后向和前向依赖的优势,结合可以为关键数据分配更高权重的注意力机制,建立了CNN-BiLSTM-Attention算法模型对A2O污水处理过程好氧区出水COD进行软测量。同时,均方根误差(RMSE),平均绝对误差(MAE),平均绝对百分比误差(MAPE)和决定系数(R2)三个指标用于评估模型,结果表明,该模型能够准确预测COD值,具有较高的准确性。同时,与CNN-LSTM-Attention等模型相比,CNN-BiLSTM,CNN-LSTM,LSTM,RNN,BP,SVM,XGBoost,和RF等。,结果表明,CNN-BiLSTM注意力模型表现最好,证明了算法模型的优越性。Wilcoxon符号秩检验表明CNN-BiLSTM-注意力模型与其他模型之间存在显著差异。
    The measurement of chemical oxygen demand (COD) is very important in the process of sewage treatment. The value of COD reflects the effectiveness and trend of sewage treatment to a certain extent, but obtaining accurate data requires high cost and labor intensity. To1 solve this problem, this paper proposes an online soft measurement method for COD based on Convolutional Neural Network-Bidirectional Long Short-Term Memory Network-Attention Mechanism (CNN-BiLSTM-Attention) algorithm. Firstly, by analyzing the mechanism of the aerobic tank stage in the Anaerobic-Anoxic-Oxic (A2O) wastewater treatment process, the selection range of input variables was preliminarily determined, and the collected sample dataset was subjected to correlation analysis. Finally, pH, dissolved oxygen (DO), electrical conductivity (EC), and water temperature (T) were determined as input variables for soft measurement prediction of COD.Then, based on the feature extraction ability of CNN and the advantage that BiLSTM is able to capture the backward and forward dependencies in time series data, combined with the attention mechanism that can assign higher weights to the key data, a CNN-BiLSTM-Attention algorithm model was established to soft measure COD in the effluent from the aerobic zone of the A2O wastewater treatment process. At the same time, root mean square error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE) and coefficient of determination (R2) were utilized Three indicators were used to evaluate the model, and the results showed that the model can accurately predict the value of COD and has a high accuracy. At the same time, compared with models such as CNN-LSTM-Attention, CNN-BiLSTM, CNN-LSTM, LSTM, RNN, BP, SVM, XGBoost, and RF etc., the results showed that the CNN-BiLSTM Attention model performed the best, proving the superiority of the algorithm model.The Wilcoxon signed-rank test indicates significant differences between the CNN-BiLSTM-Attention model and other models.
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  • 文章类型: Journal Article
    本研究建立了“技能人才生态评价模型”,势能,动能,创新,以及服务和支持生态。AHP-熵确定指标权重,Hopfield神经网络评估人才生态水平,PVAR模型分析数字化转型效果。研究结果表明:栽培生态率A,潜在生态速率B+,动力学生态速率B-,服务和支持生态费率B-,和创新生态率C.数字化转型刺激了技能需求,影响人才和经济贡献。动力学生态看到需求增加,可能对传统产业产生积极影响。创新生态需要持续的技能学习。服务和支持生态见证了数字创业的增长,需要政策激励和孵化中心支持。
    This study develops a \"Skill Talent Ecological Evaluation Model\" across cultivation, potential energy, kinetic energy, innovation, and service and support ecologies. AHP-entropy determines indicator weights, Hopfield neural network assesses talent ecology levels, and the PVAR model analyzes digital transformation effects. Findings reveal: Cultivation ecology rates A, potential ecology rates B+, kinetic ecology rates B-, service and support ecology rates B-, and innovation ecology rates C. Digital transformation spurs skill demand, impacting talent and economic contributions. Kinetic ecology sees increased demand, potentially impacting traditional industries positively. Innovation ecology necessitates continuous skill learning. Service and support ecology witnesses growth in digital entrepreneurship, requiring policy incentives and incubation center support.
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  • 文章类型: Journal Article
    探讨深度学习(DL)网络模型在物联网(IoT)数据库查询与优化中的应用效果。本研究首先分析了物联网数据库查询的体系结构,然后探索DL网络模型,最后通过优化策略对DL网络模型进行优化。通过实验验证了本研究中优化模型的优越性。实验结果表明,在模型训练和参数优化阶段,优化后的模型比其他模型具有更高的效率。特别是当数据量为2000时,优化模型的模型训练时间和参数优化时间明显低于传统模型。在资源消耗方面,随着数据量的增加,所有型号的中央处理单元和图形处理单元的使用量以及内存使用量都有所增加。然而,优化后的模型在能耗方面表现出更好的性能。在吞吐量分析中,优化后的模型可以在处理大数据请求时保持较高的事务数和每秒数据量。特别是在4000数据量下,其峰值时间处理能力超过其他型号。关于延迟,尽管所有模型的延迟都随着数据量的增加而增加,优化后的模型在数据库查询响应时间和数据处理延迟方面表现更好。研究结果不仅揭示了优化模型在处理物联网数据库查询及其优化方面的优越性能,而且为物联网数据处理和DL模型优化提供了有价值的参考。这些发现有助于推动DL技术在物联网领域的应用,特别是在需要处理大规模数据和需要高效处理场景的情况下,为相关领域的研究和实践提供了重要的参考。
    To explore the application effect of the deep learning (DL) network model in the Internet of Things (IoT) database query and optimization. This study first analyzes the architecture of IoT database queries, then explores the DL network model, and finally optimizes the DL network model through optimization strategies. The advantages of the optimized model in this study are verified through experiments. Experimental results show that the optimized model has higher efficiency than other models in the model training and parameter optimization stages. Especially when the data volume is 2000, the model training time and parameter optimization time of the optimized model are remarkably lower than that of the traditional model. In terms of resource consumption, the Central Processing Unit and Graphics Processing Unit usage and memory usage of all models have increased as the data volume rises. However, the optimized model exhibits better performance on energy consumption. In throughput analysis, the optimized model can maintain high transaction numbers and data volumes per second when handling large data requests, especially at 4000 data volumes, and its peak time processing capacity exceeds that of other models. Regarding latency, although the latency of all models increases with data volume, the optimized model performs better in database query response time and data processing latency. The results of this study not only reveal the optimized model\'s superior performance in processing IoT database queries and their optimization but also provide a valuable reference for IoT data processing and DL model optimization. These findings help to promote the application of DL technology in the IoT field, especially in the need to deal with large-scale data and require efficient processing scenarios, and offer a vital reference for the research and practice in related fields.
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  • 文章类型: Journal Article
    在这项研究中,我们采用各种机器学习模型来预测代谢表型,关注甲状腺功能,使用2007年至2012年国家健康和营养检查调查(NHANES)的数据集。我们的分析利用实验室参数相关的甲状腺功能或代谢失调,除了人口统计学特征,旨在通过各种机器学习方法揭示甲状腺功能和代谢表型之间的潜在关联。多项Logistic回归最适合确定甲状腺功能与代谢表型之间的关系,接收器工作特征曲线下面积(AUROC)为0.818,其次是神经网络(AUROC:0.814)。根据上述情况,随机森林的性能,BoostedTree,和K最近邻居不如前两种方法(分别为AUROC0.811、0.811和0.786)。在随机森林中,胰岛素抵抗的稳态模型评估,血清尿酸,血清白蛋白,γ-谷氨酰转移酶,和三碘甲状腺原氨酸/甲状腺素比率位于可变重要性的上层。这些结果凸显了机器学习在理解健康数据中复杂关系方面的潜力。然而,重要的是要注意,模型性能可能因数据特征和特定要求而异。此外,我们强调在复杂调查数据分析中考虑抽样权重的重要性,以及纳入额外变量以提高模型准确性和洞察力的潜在好处。未来的研究可以探索结合机器学习的先进方法,样本重量,并扩展了变量集,以进一步推进调查数据分析。
    In this study, we employed various machine learning models to predict metabolic phenotypes, focusing on thyroid function, using a dataset from the National Health and Nutrition Examination Survey (NHANES) from 2007 to 2012. Our analysis utilized laboratory parameters relevant to thyroid function or metabolic dysregulation in addition to demographic features, aiming to uncover potential associations between thyroid function and metabolic phenotypes by various machine learning methods. Multinomial Logistic Regression performed best to identify the relationship between thyroid function and metabolic phenotypes, achieving an area under receiver operating characteristic curve (AUROC) of 0.818, followed closely by Neural Network (AUROC: 0.814). Following the above, the performance of Random Forest, Boosted Trees, and K Nearest Neighbors was inferior to the first two methods (AUROC 0.811, 0.811, and 0.786, respectively). In Random Forest, homeostatic model assessment for insulin resistance, serum uric acid, serum albumin, gamma glutamyl transferase, and triiodothyronine/thyroxine ratio were positioned in the upper ranks of variable importance. These results highlight the potential of machine learning in understanding complex relationships in health data. However, it\'s important to note that model performance may vary depending on data characteristics and specific requirements. Furthermore, we emphasize the significance of accounting for sampling weights in complex survey data analysis and the potential benefits of incorporating additional variables to enhance model accuracy and insights. Future research can explore advanced methodologies combining machine learning, sample weights, and expanded variable sets to further advance survey data analysis.
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  • 文章类型: Journal Article
    本研究试图检验四个网格化降水数据集的有效性,即GPM综合多卫星检索(IMERG),热带降水测量任务(TRMM),现代研究和应用回顾性分析第2版(MERRA-2),使用人工神经网络(PERSIANN)从遥感信息中估算降水,利用印度气象部门(IMD)2001年至2019年在科西河流域的八个雨量计站的观测降雨数据,印度。各种统计指标,应急测试,趋势分析,每天使用降雨异常指数,每月,季节性,和年度时间尺度。分类指标,即检测概率(POD)和误报率(FAR)表明MERRA-2和IMERG数据集与观察到的每日数据具有最高的并发水平。用观察到的IMD数据集进行网格数据集的统计分析表明,IMERG数据集的性能优于MERRA-2,PERSIANN,和TRMM数据集具有“非常好”的确定系数(R2)和每月数据的Nash-Sutcliffe效率值。IMERG的网格季节性数据的趋势分析显示,观察到的季节性数据的趋势相似,而其他数据集不同。IMERG在根据年度数据确定干湿年份方面也表现良好。还讨论了卫星传感器在捕获降水方面的差异。因此,在缺乏观测数据集的情况下,IMERG数据集可有效用于水文气象和气候学调查。
    The present research endeavors to examine the effectiveness of four gridded precipitation datasets, namely Integrated Multi-satellite Retrievals for GPM (IMERG), Tropical Precipitation Measuring Mission (TRMM), Modern-Era Retrospective Analysis for Research and Applications Version 2 (MERRA-2), and Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks (PERSIANN), with the observed rainfall data of eight rain gauge stations of India Meteorological Department (IMD) from 2001 to 2019 in Kosi River basin, India. Various statistical metrics, contingency tests, trend analysis, and rainfall anomaly index were utilized at daily, monthly, seasonal, and annual time scales. The categorical metrics namely probability of detection (POD) and false alarm ratio (FAR) indicate that MERRA-2 and IMERG datasets have the highest level of concurrence with the observed daily data. Statistical analysis of gridded datasets with observed dataset of IMD showed that the performance of the IMERG dataset is better than MERRA-2, PERSIANN, and TRMM datasets with \"very good\" coefficient of determination (R2) and Nash-Sutcliffe Efficiency values for monthly data. Trend analysis of gridded seasonal data of IMERG showed similar trends of observed seasonal data whereas other dataset differs. IMERG also performed well in identifying wet and dry years based on annual data. Discrepancies of the satellite sensor in capturing the precipitation have also been discussed. Thus, the IMERG dataset can be effectively used for hydro-meteorological and climatological investigations in cases of lack of observed datasets.
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  • 文章类型: Journal Article
    背景:电子健康记录(EHR)代表了患者病史的综合资源。EHR对于利用深度学习(DL)等先进技术至关重要,使医疗保健提供商能够分析大量数据,提取有价值的见解,并做出精确和数据驱动的临床决策。诸如递归神经网络(RNN)的DL方法已被用于分析EHR以对疾病进展建模和预测诊断。然而,这些方法不能解决EHR数据中一些固有的不规则性,例如临床就诊之间的不规则时间间隔.此外,大多数DL模型是不可解释的。在这项研究中,我们提出了两种基于RNN的可解释DL架构,即时间感知RNN(TA-RNN)和TA-RNN自动编码器(TA-RNN-AE),用于预测患者在下一次就诊和多次就诊时的EHR临床结果,分别。为了减轻不规则时间间隔的影响,我们建议纳入访问之间经过时间的时间嵌入。为了可解释性,我们建议采用双层关注机制,在每次访问和功能之间运作。
    结果:在阿尔茨海默病神经影像学计划(ADNI)和国家阿尔茨海默病协调中心(NACC)数据集上进行的实验结果表明,与基于F2和敏感性的最新技术和基线方法相比,所提出的用于预测阿尔茨海默病(AD)的模型具有出色的性能。此外,TA-RNN在重症监护医学信息集市(MIMIC-III)数据集上显示出优异的死亡率预测性能。在我们的消融研究中,我们观察到通过结合时间嵌入和注意力机制来增强预测性能。最后,调查注意力权重有助于在预测中识别有影响力的访问和特征。
    方法:https://github.com/bozdaglab/TA-RNN。
    BACKGROUND: Electronic health records (EHRs) represent a comprehensive resource of a patient\'s medical history. EHRs are essential for utilizing advanced technologies such as deep learning (DL), enabling healthcare providers to analyze extensive data, extract valuable insights, and make precise and data-driven clinical decisions. DL methods such as recurrent neural networks (RNN) have been utilized to analyze EHR to model disease progression and predict diagnosis. However, these methods do not address some inherent irregularities in EHR data such as irregular time intervals between clinical visits. Furthermore, most DL models are not interpretable. In this study, we propose two interpretable DL architectures based on RNN, namely time-aware RNN (TA-RNN) and TA-RNN-autoencoder (TA-RNN-AE) to predict patient\'s clinical outcome in EHR at the next visit and multiple visits ahead, respectively. To mitigate the impact of irregular time intervals, we propose incorporating time embedding of the elapsed times between visits. For interpretability, we propose employing a dual-level attention mechanism that operates between visits and features within each visit.
    RESULTS: The results of the experiments conducted on Alzheimer\'s Disease Neuroimaging Initiative (ADNI) and National Alzheimer\'s Coordinating Center (NACC) datasets indicated the superior performance of proposed models for predicting Alzheimer\'s Disease (AD) compared to state-of-the-art and baseline approaches based on F2 and sensitivity. Additionally, TA-RNN showed superior performance on the Medical Information Mart for Intensive Care (MIMIC-III) dataset for mortality prediction. In our ablation study, we observed enhanced predictive performance by incorporating time embedding and attention mechanisms. Finally, investigating attention weights helped identify influential visits and features in predictions.
    METHODS: https://github.com/bozdaglab/TA-RNN.
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