Lime

LIME
  • 文章类型: Journal Article
    白细胞(WBC)是免疫系统的重要组成部分。WBC的有效和精确分类对于医学专业人员准确诊断疾病至关重要。这项研究提出了一种增强的卷积神经网络(CNN),用于在各种图像预处理技术的帮助下检测血细胞。各种图像预处理技术,如填充,阈值,侵蚀,膨胀,和掩蔽,用于最小化噪声和改善功能增强。此外,通过对各种建筑结构和超参数进行实验以优化所提出的模型,进一步提高了性能。进行了比较评估,以比较所提出的模型与三种迁移学习模型的性能,包括InceptionV3、MobileNetV2和DenseNet201。结果表明,该模型优于现有模型,达到99.12%的测试精度,精度99%,F1得分99%。此外,我们在研究中使用了SHAP(Shapley加法解释)和LIME(本地可解释模型-不可知解释)技术来提高所提出模型的可解释性,为模型如何做出决策提供有价值的见解。此外,使用Grad-CAM和Grad-CAM++技术进一步解释了所提出的模型,这是一种类判别定位方法,提高信任和透明度。Grad-CAM++在识别预测区域位置方面的表现略好于Grad-CAM。最后,最有效的模型已集成到端到端(E2E)系统中,可通过Web和Android平台访问,供医疗专业人员对血细胞进行分类。
    White blood cells (WBCs) are a vital component of the immune system. The efficient and precise classification of WBCs is crucial for medical professionals to diagnose diseases accurately. This study presents an enhanced convolutional neural network (CNN) for detecting blood cells with the help of various image pre-processing techniques. Various image pre-processing techniques, such as padding, thresholding, erosion, dilation, and masking, are utilized to minimize noise and improve feature enhancement. Additionally, performance is further enhanced by experimenting with various architectural structures and hyperparameters to optimize the proposed model. A comparative evaluation is conducted to compare the performance of the proposed model with three transfer learning models, including Inception V3, MobileNetV2, and DenseNet201.The results indicate that the proposed model outperforms existing models, achieving a testing accuracy of 99.12%, precision of 99%, and F1-score of 99%. In addition, We utilized SHAP (Shapley Additive explanations) and LIME (Local Interpretable Model-agnostic Explanations) techniques in our study to improve the interpretability of the proposed model, providing valuable insights into how the model makes decisions. Furthermore, the proposed model has been further explained using the Grad-CAM and Grad-CAM++ techniques, which is a class-discriminative localization approach, to improve trust and transparency. Grad-CAM++ performed slightly better than Grad-CAM in identifying the predicted area\'s location. Finally, the most efficient model has been integrated into an end-to-end (E2E) system, accessible through both web and Android platforms for medical professionals to classify blood cell.
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  • 文章类型: Journal Article
    金属污染土壤是对环境和公共健康的主要威胁,因为大多数金属即使在低浓度下也对人类和非人类生物群有毒。因此,目前需要新的可持续修复方法将金属固定在土壤中,以降低其流动性和生物利用度。在这项工作中,我们探索了水培废弃基质的应用,即椰子壳和椰子壳和松树皮的混合物,用于固定金属(Cd,Cr,Ni,Cu,Pb,Hg,来自葡萄牙矿区的自然污染土壤中的Sb和As)。对基质的固定化能力(以5%的质量比添加到土壤中)进行了单独评估,也与其他传统的农业土壤添加剂(石灰石和石膏,质量比为2%)和质量比为1-3%的零价铁(nZVI)纳米颗粒。30天孵育后获得的总体结果表明,丢弃的底物是可行的,经济,以及用于土壤中金属修复的环保解决方案,对于所研究的金属和类金属,其固定能力为20-91%。此外,他们显示了将土壤毒性(EC50〜6000mg/L)降低到无毒水平(EC50>10000mg/L)的能力。
    Soil contamination with metals is a major threat for the environment and public health since most metals are toxic to humans and to non-human biota even at low concentrations. Thus, new sustainable remediation approaches are currently needed to immobilize metals in soils to decrease their mobility and bioavailability. In this work, we explore the application of discarded substrates from hydroponic cultivation, namely coconut shell and a mixture of coconut shell and pine bark, for immobilization of metals (Cd, Cr, Ni, Cu, Pb, Hg, Sb and As) in a naturally contaminated soil from a mining region in Portugal. The immobilization capacity of substrates (added to the soil at 5% mass ratio) was assessed both individually and also combined with other traditional agriculture soil additives (limestone and gypsum, at 2% mass ratio) and nanoparticles of zero-valent iron (nZVI) at 1-3% mass ratio. The overall results obtained after a 30-d incubation showed that the discarded substrates are a viable, economic, and environmental-friendly solution for metal remediation in soils, with the capacity of immobilization ranging from 20-91% for the metals and metalloids studied. Furthermore, they showed the capacity to reduce the soil toxicity (EC50 ∼ 6000 mg/L) to non-toxic levels (EC50 > 10000 mg/L) to the bacteria Aliivrio fischeri.
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  • 文章类型: Journal Article
    像ResNet和Inception这样的深度学习架构已经为医疗保健领域的良性和恶性肿瘤分类提供了准确的预测。这使医疗机构能够做出数据驱动的决策,并可能通过采用基于计算机视觉的深度学习算法来实现恶性肿瘤的早期检测。这些CNN算法,除了需要大量的数据,可以识别在将肿瘤分类为良性或恶性时具有重要意义的较高级和较低级别的特征。然而,现有文献在结果分类的可解释性方面受到限制,并确定重要的确切特征,这在医疗保健从业者的决策过程中至关重要。因此,这项工作的动机是在卵巢肿瘤数据集上实现一个自定义分类器,它表现出很高的分类性能,随后定性地解释分类结果,使用各种可解释的人工智能方法,以识别哪些感兴趣的像素或区域被模型给予最重要的分类。数据集包括从轴向获取的卵巢肿瘤的CT扫描图像,矢状和冠状平面。国家的最先进的架构,包括从标准预训练的ResNet50派生的修改的ResNet50,在本文中实现。与现有的最先进的技术相比,提出的改进的ResNet50在测试数据集上表现出97.5%的分类准确率,而不增加架构的复杂性.然后使用几种可解释的AI技术对结果进行解释。结果表明,肿瘤的形状和局部性质对于定性确定肿瘤转移的能力以及此后被分类为良性或恶性的能力起着重要作用。
    Deep learning architectures like ResNet and Inception have produced accurate predictions for classifying benign and malignant tumors in the healthcare domain. This enables healthcare institutions to make data-driven decisions and potentially enable early detection of malignancy by employing computer-vision-based deep learning algorithms. These CNN algorithms, in addition to requiring huge amounts of data, can identify higher- and lower-level features that are significant while classifying tumors into benign or malignant. However, the existing literature is limited in terms of the explainability of the resultant classification, and identifying the exact features that are of importance, which is essential in the decision-making process for healthcare practitioners. Thus, the motivation of this work is to implement a custom classifier on the ovarian tumor dataset, which exhibits high classification performance and subsequently interpret the classification results qualitatively, using various Explainable AI methods, to identify which pixels or regions of interest are given highest importance by the model for classification. The dataset comprises CT scanned images of ovarian tumors taken from to the axial, saggital and coronal planes. State-of-the-art architectures, including a modified ResNet50 derived from the standard pre-trained ResNet50, are implemented in the paper. When compared to the existing state-of-the-art techniques, the proposed modified ResNet50 exhibited a classification accuracy of 97.5 % on the test dataset without increasing the the complexity of the architecture. The results then were carried for interpretation using several explainable AI techniques. The results show that the shape and localized nature of the tumors play important roles for qualitatively determining the ability of the tumor to metastasize and thereafter to be classified as benign or malignant.
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  • 文章类型: Journal Article
    通过利用机器学习技术进行疾病检测的研究一直受到关注。机器学习技术的使用对于及时发现重大疾病并提供适当的治疗非常重要。疾病检测是一项重要而敏感的任务,而机器学习模型可以提供强大的解决方案。他们可能会觉得复杂和不直观。因此,衡量对预测的更好理解和对结果的信任是很重要的。本文承担了皮肤病检测的关键任务,介绍了一种结合SVM和XGBoost的混合机器学习模型用于检测任务。所提出的模型优于现有的机器学习模型-支持向量机(SVM),决策树,和XGBoost,准确率为99.26%。由于症状的相似性,提高的准确性对于检测皮肤病至关重要,这使得区分不同状况具有挑战性。为了增进信任并深入了解结果,我们转向了可解释人工智能(XAI)的有前途的领域。我们探索了两个这样的框架,用于对这些机器学习模型进行局部和全局解释,即,沙普利加性扩张(SHAP)和局部可解释模型不可知解释(LIME)。
    Research on disease detection by leveraging machine learning techniques has been under significant focus. The use of machine learning techniques is important to detect critical diseases promptly and provide the appropriate treatment. Disease detection is a vital and sensitive task and while machine learning models may provide a robust solution, they can come across as complex and unintuitive. Therefore, it is important to gauge a better understanding of the predictions and trust the results. This paper takes up the crucial task of skin disease detection and introduces a hybrid machine learning model combining SVM and XGBoost for the detection task. The proposed model outperformed the existing machine learning models - Support Vector Machine (SVM), decision tree, and XGBoost with an accuracy of 99.26%. The increased accuracy is essential for detecting skin disease due to the similarity in the symptoms which make it challenging to differentiate between the different conditions. In order to foster trust and gain insights into the results we turn to the promising field of Explainable Artificial Intelligence (XAI). We explore two such frameworks for local as well as global explanations for these machine learning models namely, SHapley Additive exPlanations (SHAP) and Local Interpretable Model-agnostic Explanations (LIME).
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  • 文章类型: Journal Article
    本文讨论了过去的研究人员为使用机械和化学技术稳定膨胀(有问题的)土壤所做的努力-特别是EPS珠,石灰和粉煤灰。管理有问题的土壤的膨胀对于土木工程师防止结构损坏至关重要。本文总结了使用EPS降低膨胀电位的研究,石灰和粉煤灰分别。用石灰和粉煤灰进行化学稳定是膨胀土稳定的常规方法,有已知的优点和缺点。本文探讨了不同材料在各种条件下的适用性和稳定机理,包括阳离子交换,絮凝,和火山灰反应。稳定程度受各种因素的影响,如添加剂的类型和用量,土壤矿物学,固化温度,成型过程中的水分含量,还有纳米二氧化硅的存在,有机物,和硫酸盐.此外,膨胀聚苯乙烯(EPS)通过在包围的粘土膨胀时压缩来改善结构完整性,减少整体肿胀。因此,EPS通过机械手段解决化学品的限制。组合EPS,石灰和粉煤灰创造了一个定制的系统,促进高效,持久的,具有成本效益和生态友好的土壤稳定。化学品解决了EPS的局限性,如稳定性差。本文有利于土木工程师寻求控制膨胀土膨胀和防止结构破坏。它表明了EPS-石灰-粉煤灰系统的潜力,并通过确定此类组合稳定剂系统进一步工作的研究空白来得出结论。
    This paper discusses efforts made by past researchers to steady the expansive (problematic) soils using mechanical and chemical techniques - specifically with EPS beads, lime and fly ash. Administering swelling of problematic soils is critical for civil engineers to prevent structural distress. This paper summarizes studies on reduction of swelling potential using EPS, lime and fly ash individually. Chemical stabilization with lime and fly ash are conventional methods for expansive soil stabilization, with known merits and demerits. This paper explores the suitability of different materials under various conditions and stabilization mechanisms, including cation exchange, flocculation, and pozzolanic reactions. The degree of stabilization is influenced by various factors such as the type and amount of additives, soil mineralogy, curing temperature, moisture content during molding, and the presence of nano-silica, organic matter, and sulfates. Additionally, expanded polystyrene (EPS) improves structural integrity by compressing when surrounded clay swells, reducing overall swelling. Thus, EPS addresses limitations of chemicals by mechanical means. Combining EPS, lime and fly ash creates a customized system promoting efficient, long-lasting, cost-effective and eco-friendly soil stabilization. Chemicals address EPS limitations like poor stabilization. This paper benefits civil engineers seeking to control expansive soil swelling and prevent structural distress. It indicates potential of an EPS-lime-fly ash system and concludes by identifying research gaps for further work on such combinatorial stabilizer systems.
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  • 文章类型: Journal Article
    考虑到粘性土的无侧限抗压强度(UCS),必须研究和稳定粘性土,以用于路面路基和压实的垃圾填埋场衬砌的施工。只要天然粘性土的强度低于200kN/m2,有一个结构的必要性,以提高其机械性能,以适应预期的结构目的。路基和垃圾填埋场是重要的环境岩土结构,由于它们在保护环境免受相关危害方面的作用,因此需要工程服务部门的关注。在这个研究项目中,对水泥和石灰重建的粘性土的无侧限抗压强度(UCS)的行为进行了比较研究和适用性评估,并使用基于多重集成的机器学习分类和符号回归技术在最佳压实下机械稳定。基于集成的ML分类技术是梯度提升(GB),CN2,幼稚贝叶斯(NB),支持向量机(SVM),随机梯度下降(SGD),k-最近邻(K-NN),决策树(Tree)和随机森林(RF)以及人工神经网络(ANN)和响应面方法(RSM)来估计(UCS,MPa)用水泥和石灰稳定的粘性土。考虑的投入是水泥(C),石灰(Li),液限(LL),塑性指数(PI),最佳水分含量(OMC),和最大干密度(MDD)。从实验练习中收集了总共190个混合条目,并将其划分为74-26%的训练测试数据集。在模型练习结束时,结果发现,GB和K-NN模型都表现出95%的同样出色的准确性,而CN2、SVM、和树模型共享大约90%的精度。RF和SGD模型显示出大约65-80%的相当精度水平,最后(NB)严重地产生了13%的不可接受的低精度。ANN和RSM也显示出与SVM和树紧密匹配的准确性。相关矩阵和敏感性分析均表明,MDD对UCS的影响较大,然后是稠度限值和水泥含量,石灰含量排在第三位,而(OMC)的影响几乎被忽视。考虑到压实水分的影响几乎可以忽略不计,此结果可应用于现场,以获得石灰重组土壤的最佳压实。
    It has been imperative to study and stabilize cohesive soils for use in the construction of pavement subgrade and compacted landfill liners considering their unconfined compressive strength (UCS). As long as natural cohesive soil falls below 200 kN/m2 in strength, there is a structural necessity to improve its mechanical property to be suitable for the intended structural purposes. Subgrades and landfills are important environmental geotechnics structures needing the attention of engineering services due to their role in protecting the environment from associated hazards. In this research project, a comparative study and suitability assessment of the best analysis has been conducted on the behavior of the unconfined compressive strength (UCS) of cohesive soil reconstituted with cement and lime and mechanically stabilized at optimal compaction using multiple ensemble-based machine learning classification and symbolic regression techniques. The ensemble-based ML classification techniques are the gradient boosting (GB), CN2, naïve bayes (NB), support vector machine (SVM), stochastic gradient descent (SGD), k-nearest neighbor (K-NN), decision tree (Tree) and random forest (RF) and the artificial neural network (ANN) and response surface methodology (RSM) to estimate the (UCS, MPa) of cohesive soil stabilized with cement and lime. The considered inputs were cement (C), lime (Li), liquid limit (LL), plasticity index (PI), optimum moisture content (OMC), and maximum dry density (MDD). A total of 190 mix entries were collected from experimental exercises and partitioned into 74-26% train-test dataset. At the end of the model exercises, it was found that both GB and K-NN models showed the same excellent accuracy of 95%, while CN2, SVM, and Tree models shared the same level of accuracy of about 90%. RF and SGD models showed fair accuracy level of about 65-80% and finally (NB) badly producing an unacceptable low accuracy of 13%. The ANN and the RSM also showed closely matched accuracy to the SVM and the Tree. Both of correlation matrix and sensitivity analysis indicated that UCS is greatly affected by MDD, then the consistency limits and cement content, and lime content comes in the third place while the impact of (OMC) is almost neglected. This outcome can be applied in the field to obtain optimal compacted for a lime reconstituted soil considering the almost negligible impact of compactive moisture.
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  • 文章类型: Journal Article
    黑色素瘤,最致命的皮肤癌之一,造成全球数千人死亡。蓝色的,蓝白色,或蓝白面纱(BWV)是诊断黑色素瘤的关键特征,然而,在皮肤病学图像中检测BWV的研究是有限的。这项研究利用了一个非注释的皮肤损伤数据集,使用基于调色板的病变块上的拟议成像算法(颜色阈值技术)将其转换为带注释的数据集。深度卷积神经网络(DCNN)在三个单独和组合的皮肤数据集上分别设计和训练,使用自定义图层而不是标准激活函数图层。开发该模型以基于BWV的存在对皮肤损伤进行分类。与跨不同数据集的常规BWV检测模型相比,所提出的DCNN表现出卓越的性能。该模型在增强PH2数据集上实现了85.71%的测试精度,95.00%在增强的ISIC存档数据集上,在合并的增强(PH2+ISIC存档)数据集上为95.05%,和Derm7pt数据集上的90.00%。随后应用可解释的人工智能(XAI)算法来解释DCNN关于BWV检测的决策过程。拟议的方法,加上XAI,显着提高BWV在皮肤病变中的检测,优于现有模型,并为早期黑色素瘤诊断提供了强大的工具。
    Melanoma, one of the deadliest types of skin cancer, accounts for thousands of fatalities globally. The bluish, blue-whitish, or blue-white veil (BWV) is a critical feature for diagnosing melanoma, yet research into detecting BWV in dermatological images is limited. This study utilizes a non-annotated skin lesion dataset, which is converted into an annotated dataset using a proposed imaging algorithm (color threshold techniques) on lesion patches based on color palettes. A Deep Convolutional Neural Network (DCNN) is designed and trained separately on three individual and combined dermoscopic datasets, using custom layers instead of standard activation function layers. The model is developed to categorize skin lesions based on the presence of BWV. The proposed DCNN demonstrates superior performance compared to the conventional BWV detection models across different datasets. The model achieves a testing accuracy of 85.71 % on the augmented PH2 dataset, 95.00 % on the augmented ISIC archive dataset, 95.05 % on the combined augmented (PH2+ISIC archive) dataset, and 90.00 % on the Derm7pt dataset. An explainable artificial intelligence (XAI) algorithm is subsequently applied to interpret the DCNN\'s decision-making process about the BWV detection. The proposed approach, coupled with XAI, significantly improves the detection of BWV in skin lesions, outperforming existing models and providing a robust tool for early melanoma diagnosis.
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  • 文章类型: Journal Article
    自动驾驶的最新进展伴随着损害自动驾驶汽车(AV)网络的相关网络安全问题。激励使用人工智能模型来检测这些网络上的异常。在这种情况下,使用可解释AI(XAI)来解释这些异常检测AI模型的行为至关重要。这项工作引入了一个全面的框架来评估用于AV中异常检测的黑盒XAI技术,促进对全局和局部XAI方法的检查,以阐明XAI技术做出的决策,这些决策解释了对异常AV行为进行分类的AI模型的行为。通过考虑六个评估指标(描述性准确性,稀疏,稳定性,效率,鲁棒性,和完整性),该框架评估了两种著名的黑盒XAI技术,SHAP和LIME,涉及应用XAI技术来识别对异常分类至关重要的主要特征,接下来是使用两个流行的自动驾驶数据集评估六个指标的SHAP和LIME的广泛实验,VeReMi和传感器。这项研究推进了黑盒XAI方法在自动驾驶系统中的真实世界异常检测的部署,在这一关键领域内,对当前黑箱XAI方法的优势和局限性做出有价值的见解。
    The recent advancements in autonomous driving come with the associated cybersecurity issue of compromising networks of autonomous vehicles (AVs), motivating the use of AI models for detecting anomalies on these networks. In this context, the usage of explainable AI (XAI) for explaining the behavior of these anomaly detection AI models is crucial. This work introduces a comprehensive framework to assess black-box XAI techniques for anomaly detection within AVs, facilitating the examination of both global and local XAI methods to elucidate the decisions made by XAI techniques that explain the behavior of AI models classifying anomalous AV behavior. By considering six evaluation metrics (descriptive accuracy, sparsity, stability, efficiency, robustness, and completeness), the framework evaluates two well-known black-box XAI techniques, SHAP and LIME, involving applying XAI techniques to identify primary features crucial for anomaly classification, followed by extensive experiments assessing SHAP and LIME across the six metrics using two prevalent autonomous driving datasets, VeReMi and Sensor. This study advances the deployment of black-box XAI methods for real-world anomaly detection in autonomous driving systems, contributing valuable insights into the strengths and limitations of current black-box XAI methods within this critical domain.
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  • 文章类型: Journal Article
    背景:机器学习技术已被证明在识别健康错误信息方面是有效的,但是结果可能是不可信的,除非它们能够以一种可以理解的方式被证明是合理的。
    目的:本研究旨在提供一种新的基于标准的系统来评估和证明健康新闻质量。使用现有标准集的子集,这项研究比较了两种增加可解释性的替代方法的可行性。两种方法都使用分类和突出显示来可视化句子级别的证据。
    方法:总共选择了10个完善的标准中的3个进行实验,即健康新闻是否讨论了干预的成本(成本标准),解释或量化干预的危害(危害标准),并确定了利益冲突(冲突标准)。实验的第一步是通过开发句子级分类器来自动评估3个标准。我们测试了Logistic回归,天真的贝叶斯,支持向量机,和随机森林算法。接下来,我们比较了两种可视化方法。对于第一种方法,我们计算了单词特征权重,它解释了分类模型如何提取有助于预测的关键词;然后,使用本地可解释的模型不可知的解释框架,我们在文档级别选择了与分类标准相关的关键字;最后,系统选择并突出显示带有关键字的句子。对于第二种方法,我们从100篇健康新闻中提取了提供支持评估结果的证据的句子;基于这些结果,我们在句子级别训练了一个类型学分类模型;然后,系统突出显示了一个积极的句子实例,用于结果证明。要突出显示的句子的数量由使用平均准确度凭经验确定的预设阈值确定。
    结果:健康新闻对成本的自动评估,伤害,和冲突标准的平均曲线下面积得分分别为0.88、0.76和0.73,经过50次重复的10倍交叉验证。我们发现两种方法都可以成功地可视化系统的解释,但是两种方法的性能因标准而异,并且随着突出显示的句子数量的增加,突出显示的准确性降低。当阈值精度≥75%时,这导致了一个可视化的可变长度范围从1到6个句子。
    结论:我们提供了2种方法来解释基于3个标准的健康新闻评估模型。该方法结合了基于规则和统计机器学习方法。结果表明,可以使用两种方法成功地从视觉上解释基于标准的自动健康新闻质量评估;但是,当考虑多个质量相关标准时,可能会出现更大的差异。这项研究可以增加公众对计算机化健康信息评估的信任。
    BACKGROUND: Machine learning techniques have been shown to be efficient in identifying health misinformation, but the results may not be trusted unless they can be justified in a way that is understandable.
    OBJECTIVE: This study aimed to provide a new criteria-based system to assess and justify health news quality. Using a subset of an existing set of criteria, this study compared the feasibility of 2 alternative methods for adding interpretability. Both methods used classification and highlighting to visualize sentence-level evidence.
    METHODS: A total of 3 out of 10 well-established criteria were chosen for experimentation, namely whether the health news discussed the costs of the intervention (the cost criterion), explained or quantified the harms of the intervention (the harm criterion), and identified the conflicts of interest (the conflict criterion). The first step of the experiment was to automate the evaluation of the 3 criteria by developing a sentence-level classifier. We tested Logistic Regression, Naive Bayes, Support Vector Machine, and Random Forest algorithms. Next, we compared the 2 visualization approaches. For the first approach, we calculated word feature weights, which explained how classification models distill keywords that contribute to the prediction; then, using the local interpretable model-agnostic explanation framework, we selected keywords associated with the classified criterion at the document level; and finally, the system selected and highlighted sentences with keywords. For the second approach, we extracted sentences that provided evidence to support the evaluation result from 100 health news articles; based on these results, we trained a typology classification model at the sentence level; and then, the system highlighted a positive sentence instance for the result justification. The number of sentences to highlight was determined by a preset threshold empirically determined using the average accuracy.
    RESULTS: The automatic evaluation of health news on the cost, harm, and conflict criteria achieved average area under the curve scores of 0.88, 0.76, and 0.73, respectively, after 50 repetitions of 10-fold cross-validation. We found that both approaches could successfully visualize the interpretation of the system but that the performance of the 2 approaches varied by criterion and highlighting the accuracy decreased as the number of highlighted sentences increased. When the threshold accuracy was ≥75%, this resulted in a visualization with a variable length ranging from 1 to 6 sentences.
    CONCLUSIONS: We provided 2 approaches to interpret criteria-based health news evaluation models tested on 3 criteria. This method incorporated rule-based and statistical machine learning approaches. The results suggested that one might visually interpret an automatic criterion-based health news quality evaluation successfully using either approach; however, larger differences may arise when multiple quality-related criteria are considered. This study can increase public trust in computerized health information evaluation.
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  • 文章类型: Journal Article
    在过去的二十年中,碱活性矿渣混凝土(AASC)一直是一项持续的研究活动。与普通波特兰水泥相比,其具有良好的发展前景和环保性,使AASC引起了极大的兴趣。然而,仍然没有牢固的混合设计,对于AASC来说,基于粘合剂和活化剂的组成,其可以提供期望的新鲜和硬化性质。这项研究专门旨在研究影响参数的坍落度和抗压强度的碱活化矿渣/石灰基混凝土,并提供了一个更好的理解这些特性的潜在原因。实验程序包括两个阶段;第一阶段研究了不同的粘合剂和活化剂组成的影响,第二阶段研究了水胶比和粘结剂含量对碱矿渣/石灰基混凝土坍落度和抗压强度的影响。通过两个主要参数定义粘合剂和活化剂组成,混合因子(HF=CaO/Si2O+Al2O3)和溶液模量(Ms=SiO2/Na2O)。抗压强度,最初的低迷,测量和坍落度损失以评估不同的混合物并指定组合物的最佳范围。根据所研究的参数,达到所需坍落度和混凝土抗压强度的有效范围是在1.5Ms下从HF0.6到0.8,这将达到超过30MPa的抗压强度和90分钟后100mm的坍落度。
    Alkali Activated Slag Concrete (AASC) has been a sustained research activity over the past two decades. Its promising characteristics and being environmentally friendly compared to Ordinary Portland Cement made AASC of exceptional interest. However, there is still no firm mix design, for the AASC, that can provide desirable fresh and hardened properties based on the composition of the binder and activator. This research specifically aims to investigate the affecting parameters on the slump and compressive strength of alkali-activated slag/lime-based concrete and provide a better understanding of the potential reasons for these characteristics. The experimental program consisted of two stages; the first stage studied the effect of different binder and activator compositions, and the second stage studied the water-to-binder ratio and binder content effects on the slump and compressive strength of alkali-activated slag/lime-based concrete. The binder and activator compositions were defined through two main parameters, the hybrid factor (HF = CaO/Si2O + Al2O3) and the solution modulus (Ms = SiO2/Na2O). The compressive strength, initial slump, and slump loss were measured to evaluate the different mixes and specify the optimum range of compositions. Based on the studied parameters, the effective range to achieve desirable slump and concrete compressive strength is from HF 0.6 up to 0.8 at Ms 1.5, this would achieve a compressive strength of more than 30 MPa and a slump of 100 mm after 90 min.
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