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1.
Lecture Notes in Electrical Engineering ; 954:347-356, 2023.
Article in English | Scopus | ID: covidwho-20245022

ABSTRACT

Teleconsultation is a type of medical practice similar to face-to-face consultations, and it allows a health professional to give a consultation remotely through information and communication technologies. In the context of the management of the coronavirus epidemic, the use of teleconsultation practices can facilitate healthcare access and limit the risk of avoidable propagation in medical cabinets. This paper presents the monitoring of international teleconsultation referrals in the era of Covid-19 to facilitate and prevent the suspension of access to care, the most common architecture for teleconsultation, communication technologies and protocols, vital body signals, video transmission, and the conduct of teleconsultation. The aim is to develop a teleconsultation platform to diagnose the patient in real time, transmit data from the remote location to the doctor, and provide a teleconsultation. © 2023, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.

2.
International Journal of Production Research ; 61(14):4934-4950, 2023.
Article in English | ProQuest Central | ID: covidwho-20244424

ABSTRACT

Because of the Covid-19 pandemic, urgent surging demand for healthcare products such as personal protective equipment (PPE) has caused significant challenges for multi-tier supply chain management. Although a given firm may predominantly focus on an arms-length solution by targeting the first-tier supplier, the firm can still struggle with extended multi-tier suppliers it cannot choose which use unsustainable practices. One key goal is compliance across various dimensions with production, environmental and labour standards across the multi-tier supply chain, a goal that blockchain technology can be applied to manage. Based on a comprehensive literature review, this research develops a system architecture of blockchain-based multi-tier sustainable supply chain management in the PPE industry designed to identify and coordinate standards in production and social and environmental sustainability in multi-tier PPE supply chains. The architecture was validated by theoretical basis, expert opinions and technical solutions. We conclude with managerial implications for implementing blockchain technology to advance sustainable multi-tier supply chain practices.

3.
ACM International Conference Proceeding Series ; 2022.
Article in English | Scopus | ID: covidwho-20244307

ABSTRACT

This paper proposes a deep learning-based approach to detect COVID-19 infections in lung tissues from chest Computed Tomography (CT) images. A two-stage classification model is designed to identify the infection from CT scans of COVID-19 and Community Acquired Pneumonia (CAP) patients. The proposed neural model named, Residual C-NiN uses a modified convolutional neural network (CNN) with residual connections and a Network-in-Network (NiN) architecture for COVID-19 and CAP detection. The model is trained with the Signal Processing Grand Challenge (SPGC) 2021 COVID dataset. The proposed neural model achieves a slice-level classification accuracy of 93.54% on chest CT images and patient-level classification accuracy of 86.59% with class-wise sensitivity of 92.72%, 55.55%, and 95.83% for COVID-19, CAP, and Normal classes, respectively. Experimental results show the benefit of adding NiN and residual connections in the proposed neural architecture. Experiments conducted on the dataset show significant improvement over the existing state-of-the-art methods reported in the literature. © 2022 ACM.

4.
Electronics ; 12(11):2378, 2023.
Article in English | ProQuest Central | ID: covidwho-20244207

ABSTRACT

This paper presents a control system for indoor safety measures using a Faster R-CNN (Region-based Convolutional Neural Network) architecture. The proposed system aims to ensure the safety of occupants in indoor environments by detecting and recognizing potential safety hazards in real time, such as capacity control, social distancing, or mask use. Using deep learning techniques, the system detects these situations to be controlled, notifying the person in charge of the company if any of these are violated. The proposed system was tested in a real teaching environment at Rey Juan Carlos University, using Raspberry Pi 4 as a hardware platform together with an Intel Neural Stick board and a pair of PiCamera RGB (Red Green Blue) cameras to capture images of the environment and a Faster R-CNN architecture to detect and classify objects within the images. To evaluate the performance of the system, a dataset of indoor images was collected and annotated for object detection and classification. The system was trained using this dataset, and its performance was evaluated based on precision, recall, and F1 score. The results show that the proposed system achieved a high level of accuracy in detecting and classifying potential safety hazards in indoor environments. The proposed system includes an efficiently implemented software infrastructure to be launched on a low-cost hardware platform, which is affordable for any company, regardless of size or revenue, and it has the potential to be integrated into existing safety systems in indoor environments such as hospitals, warehouses, and factories, to provide real-time monitoring and alerts for safety hazards. Future work will focus on enhancing the system's robustness and scalability to larger indoor environments with more complex safety hazards.

5.
Progress in Biomedical Optics and Imaging - Proceedings of SPIE ; 12465, 2023.
Article in English | Scopus | ID: covidwho-20243842

ABSTRACT

This paper introduces the improved method for the COVID-19 classification based on computed tomography (CT) volumes using a combination of a complex-architecture convolutional neural network (CNN) and orthogonal ensemble networks (OEN). The novel coronavirus disease reported in 2019 (COVID-19) is still spreading worldwide. Early and accurate diagnosis of COVID-19 is required in such a situation, and the CT scan is an essential examination. Various computer-aided diagnosis (CAD) methods have been developed to assist and accelerate doctors' diagnoses. Although one of the effective methods is ensemble learning, existing methods combine some major models which do not specialize in COVID-19. In this study, we attempted to improve the performance of a CNN for the COVID-19 classification based on chest CT volumes. The CNN model specializes in feature extraction from anisotropic chest CT volumes. We adopt the OEN, an ensemble learning method considering inter-model diversity, to boost its feature extraction ability. For the experiment, We used chest CT volumes of 1283 cases acquired in multiple medical institutions in Japan. The classification result on 257 test cases indicated that the combination could improve the classification performance. © 2023 SPIE.

6.
International IEEE/EMBS Conference on Neural Engineering, NER ; 2023-April, 2023.
Article in English | Scopus | ID: covidwho-20243641

ABSTRACT

This study proposes a graph convolutional neural networks (GCN) architecture for fusion of radiological imaging and non-imaging tabular electronic health records (EHR) for the purpose of clinical event prediction. We focused on a cohort of hospitalized patients with positive RT-PCR test for COVID-19 and developed GCN based models to predict three dependent clinical events (discharge from hospital, admission into ICU, and mortality) using demographics, billing codes for procedures and diagnoses and chest X-rays. We hypothesized that the two-fold learning opportunity provided by the GCN is ideal for fusion of imaging information and tabular data as node and edge features, respectively. Our experiments indicate the validity of our hypothesis where GCN based predictive models outperform single modality and traditional fusion models. We compared the proposed models against two variations of imaging-based models, including DenseNet-121 architecture with learnable classification layers and Random Forest classifiers using disease severity score estimated by pre-trained convolutional neural network. GCN based model outperforms both imaging-only methods. We also validated our models on an external dataset where GCN showed valuable generalization capabilities. We noticed that edge-formation function can be adapted even after training the GCN model without limiting application scope of the model. Our models take advantage of this fact for generalization to external data. © 2023 IEEE.

7.
Journal of Population Therapeutics and Clinical Pharmacology ; 30(3):E452-E461, 2023.
Article in English | Web of Science | ID: covidwho-20243123

ABSTRACT

In light of the COVID-19 pandemic, getting infected through the built environment is being studied. The measures that should be taken to reduce infection through the built environment are essential;not only for COVID-19, but this idea is present at all times of widespread diseases.The purpose of this research is to systematically review the relationship between the built environment and the spread of infection to create a potential guideline to reduce the transmission rate. Articles and studies on the relationship between infectious disease and the built environment were reviewed.Articles matching the selection criteria were identified. Most articles described peer reviews, consensus statements, and reports. The articles have provided data that can be used as guidance for reducing the transmission of infection within the built environment. It was found that evidence has been created such as ventilation, buffer spaces, flooring, and surfaces that can reduce the infection of COVID-19.

8.
2022 IEEE Information Technologies and Smart Industrial Systems, ITSIS 2022 ; 2022.
Article in English | Scopus | ID: covidwho-20242116

ABSTRACT

The main purpose of this paper was to classify if subject has a COVID-19 or not base on CT scan. CNN and resNet-101 neural network architectures are used to identify the coronavirus. The experimental results showed that the two models CNN and resNet-101 can identify accurately the patients have COVID-19 from others with an excellent accuracy of 83.97 % and 90.05 % respectively. The results demonstrates the best ability of the used models in the current application domain. © 2022 IEEE.

9.
International Conference on Enterprise Information Systems, ICEIS - Proceedings ; 1:57-67, 2023.
Article in English | Scopus | ID: covidwho-20239993

ABSTRACT

Companies continuously produce several documents containing valuable information for users. However, querying these documents is challenging, mainly because of the heterogeneity and volume of documents available. In this work, we investigate the challenge of developing a Big Data Question Answering system, i.e., a system that provides a unified, reliable, and accurate way to query documents through naturally asked questions. We define a set of design principles and introduce BigQA, the first software reference architecture to meet these design principles. The architecture consists of high-level layers and is independent of programming language, technology, querying and answering algorithms. BigQA was validated through a pharmaceutical case study managing over 18k documents from Wikipedia articles and FAQ about Coronavirus. The results demonstrated the applicability of BigQA to real-world applications. In addition, we conducted 27 experiments on three open-domain datasets and compared the recall results of the well-established BM25, TF-IDF, and Dense Passage Retriever algorithms to find the most appropriate generic querying algorithm. According to the experiments, BM25 provided the highest overall performance. Copyright © 2023 by SCITEPRESS - Science and Technology Publications, Lda. Under CC license (CC BY-NC-ND 4.0)

10.
Proceedings of the 10th International Conference on Signal Processing and Integrated Networks, SPIN 2023 ; : 421-426, 2023.
Article in English | Scopus | ID: covidwho-20239607

ABSTRACT

The severe acute respiratory syndrome(SARS-CoV2) led to a pandemic of respiratory disease, namely COVID19. The disease has scaled worldwide and has become a global health concern. Unfortunately, the pandemic not just cost several individuals their lives but also, resulted in many people losing their jobs and life savings. In times like these, ordinary people become fearful of their resources in a world that gives its best resources to the wealthiest beings. Following the pandemic, the world suffered greatly and survival was rather difficult. As a result, numerous analytical techniques were developed to address this issue, with the key one being the discovery that the efficacy of clinically tested vaccines is actually quite poor. When researchers and medical professionals were unable to find a cure, radiologists and engineers created techniques to detect infected chests with the help of X-rays. Our proposed solution involves a CNN + LSTM model which has secured an accuracy of 98% compared to 95% of the trusted VGG-16 architecture. Our model's area under the curve (AUC) scores reached 99.458% while using RMSprop. A crucial feature of image processing till depth is accessible through scanning features from the layers of images using CNN. Our model uses 5 convolution blocks to detect the features. The coordination of activator functions, learning rates, and flattening has enabled accurate in-point predictions. With merely X-rays, models like ours ensure that anyone can easily detect covid-19. The best results obtained were at a learning rate =0.01 with RMSprop and Adam functions. The model has good fortune in detecting any other lung disease which occurs in the near future, as our data collectively rounds up to 4.5 gigabytes of data providing higher precision. © 2023 IEEE.

11.
Proceedings of 2023 3rd International Conference on Innovative Practices in Technology and Management, ICIPTM 2023 ; 2023.
Article in English | Scopus | ID: covidwho-20239398

ABSTRACT

Recently, the COVID-19 pandemic has emerged as one of the world's most critical public health concerns. One of the biggest problems in the present COVID-19 outbreak is the difficulty of accurately separating COVID-19 cases from non-COVID-19 cases at an affordable price and in the initial stages. Besides the use of antigen Rapid Test Kit (RTK) and Reverse Transcription Polymerase Chain Reaction (RT-PCR), chest x-rays (CXR) can also be used to identify COVID-19 patients. Unfortunately, manual checks may produce inaccurate results, delay treatment or even be fatal. Because of differences in perception and experience, the manual method can be chaotic and imprecise. Technology has progressed to the point where we can solve this problem by training a Deep Learning (DL) model to distinguish the normal and COVID-19 X-rays. In this work, we choose the Convolutional Neural Network (CNN) as our DL model and train it using Kaggle datasets that include both COVID-19 and normal CXR data. The developed CNN model is then deployed on the website after going through a training and validation process. The website layout is straightforward to navigate. A CXR can be uploaded and a prediction made with minimal effort from the patient. The website assists in determining whether they have been exposed to COVID-19 or not. © 2023 IEEE.

12.
Cancer Research, Statistics, and Treatment ; 5(2):361-362, 2022.
Article in English | EMBASE | ID: covidwho-20238218
13.
Progress in Biomedical Optics and Imaging - Proceedings of SPIE ; 12465, 2023.
Article in English | Scopus | ID: covidwho-20237995

ABSTRACT

COVID-19 has spread around the world since 2019. Approximately 6.5% of COVID-19 a risk of developing severe disease with high mortality rate. To reduce the mortality rate and provide appropriate treatment, this research established an integrated models with to predict the clinical outcome of COVID-19 patients with clinical, deep learning and radiomics features. To obtain the optimal feature combination for prediction, 9 clinical features combination was selected from all available clinical factors after using LASSO, 18 deep learning features from U-Net architecture, and 9 radiomics features from segmentation result. A total of 213 COVID-19 patients and 335 non-COVID-19 patients from 5 hospitals were enrolled and used as training and test sample in this research. The proposed model obtained an accuracy, precision, recall, specificity, F1-score and ROC curve of 0.971, 0.943, 0.937, 0.974, 0.941 and 0.979, respectively, which exceeds the related work using only clinical, deep learning or radiomics factors. © 2023 SPIE.

14.
(Re)designing the continuum of care for older adults: The future of long-term care settings ; : 237-259, 2023.
Article in English | APA PsycInfo | ID: covidwho-20237542

ABSTRACT

Where and how people die is a significant concern of human life and society (Worpole, 2009). In these days, people die either in their home or in an end-of-life care facility, such as hospice. Hospice is a place to provide end-of-life care to individuals certified as "terminal." Hospice care or end-of-life care is a multidisciplinary care and support (non-curative) system designed to address the physical, emotional, psychosocial, and spiritual concerns of terminal patients and their families. Thus, the facility design is significantly different in various dimensions. For example, hospice patients are mostly bed-bound, and a patient's family accommodation plays a significant role in the patient's dying experience. Providing a supportive physical environment of hospice has an imperative impact on the patient "quality of life" and the possibility of a "good death." With the COVID-19 challenges, it has become significant to explore the best possible solutions of hospice facility design. This chapter discusses the 11 therapeutic goals of hospice care environment which was developed by Kader and Diaz Moore in 2015 considering dying experiences. The physical settings of hospice along with the carefully designed organizational environment can contribute to the realization of desired therapeutic goals and have a positive effect on the lives of dying patients. This chapter discusses each therapeutic goal and how hospice facility design can support these goals with a few examples and presents six major design-related challenges of post-pandemic (COVID-19) hospice care facilities. Lastly, several prospective design concepts have explored considering pandemic resiliency. (PsycInfo Database Record (c) 2023 APA, all rights reserved)

15.
International Conference on Evaluation of Novel Approaches to Software Engineering, ENASE - Proceedings ; 2023-April:554-561, 2023.
Article in English | Scopus | ID: covidwho-20237205

ABSTRACT

The objective of this research paper is to investigate the impact of COVID-19 on the factors influencing on-time software project delivery in different Software Development Life Cycle (SDLC) models such as Agile, Incremental, Waterfall, and Prototype models. Also to identify the change of crucial factors with respect to different demographic information that influences on-time software project delivery. This study has been conducted using a quantitative approach. We surveyed Software Developers, Project Managers, Software Architect, QA Engineer and other roles using a Google form. Python has been used for data analysis purposes. We received 72 responses from 11 different software companies of Bangladesh, based on that we find that Attentional Focus, Team Stability, Communication, Team Maturity, and User Involvement are the most important factors for on-time software project delivery in different SDLC models during COVID-19. On the contrary, before COVID-19 Team Capabilities, Infrastructure, Team Commitment, Team Stability and Team Maturity are found as the most crucial factors. Team Maturity and Team Stability are found as common important factors for both before and during the COVID-19 scenario. We also identified the change in the impact level of factors with respect to demographic information such as experience, company size, and different SDLC models used by participants. Attentional focus is the most important factor for experienced developers while for freshers all factors are almost equally important. This study finds that there is a significant change among factors for on-time software project delivery before and during the COVID-19 scenario. Copyright © 2023 by SCITEPRESS - Science and Technology Publications, Lda. Under CC license (CC BY-NC-ND 4.0)

16.
ArchNet-IJAR : International Journal of Architectural Research ; 17(2):393-408, 2023.
Article in English | ProQuest Central | ID: covidwho-20236625

ABSTRACT

PurposeDesign studios experienced an unprecedented contribution of technology when it came to organizing studios online, as imposed by COVID-19, which requires exploration of its impacts on the main metaphors of education, learning dimensions, and undoubtedly studio culture.Design/methodology/approachIn order to explore the impacts on the key dimensions of learning, a careful investigation was carried out from organizational, instructional, and learner points of view. The investigation utilized thematic analysis of records of pedagogical actions, as well as online communications, performance, and questionnaire responses of students to infer the conclusions. The freshmen architecture students were found to be an important group for study since they had no previous experiences in on-site design studios and will continue their education based on their first-year experiences.FindingsExploration of indicators—including reflective dialogue, retention, transfer of learned information to decisions, processing feedback as an investment in future performance, and self-regulation—as major contributors to design learning revealed that first-year students exhibited strong presence and interaction during online studio, and students' individuality influenced the teaching environment in terms of content and process. Hence, sense of belonging, which is a revamped feature of authentic context and studio culture, expands toward fortification of bottom-up educational frontiers.Originality/valueDeveloping pedagogies with no concern for the unprecedented impacts of the transformative role of technology on fundamental layers of design education will adversely influence students' chances of personal and professional success. The findings in this paper, regarding the transformational impacts of technology on design studio culture, follow investigation of the direction it has led current and can lead future design education. The study provides unique support for crystalizing new teaching and learning opportunities and pedagogical developments.

17.
Proceedings - IEEE International Conference on Device Intelligence, Computing and Communication Technologies, DICCT 2023 ; : 457-462, 2023.
Article in English | Scopus | ID: covidwho-20236044

ABSTRACT

Since the COVID-19 pandemic is on the rise again with hazardous effects in China, it has become very crucial for global individuals and the authorities to avoid spreading of the virus. This research aims to identify algorithms with high accuracy and moderate computing complexity at the same time (although conventional machine learning works on low computation power, we have rather used CNN for our research work as the accuracy of CNN is drastically greater than the former), to identify the proper enforcement of face masks. In order to find the best Neural Network architecture we used many deep CNN Methodologies to solve classification problem in regards of masked and non masked image dataset. In this approach we applied different model architectures, like VGG16, Resnet50, Resnet101 and VGG19, on a large dataset to train on and compared the model on the basis of accuracy in which VGG16 came out to be the best. VGG16 was further tuned with different optimizers to determine the one best fit of the model. VGG16 gave an ideal accuracy of 99.37% with the best fit optimizer over a real life data set. © 2023 IEEE.

18.
Proceedings of the 17th INDIACom|2023 10th International Conference on Computing for Sustainable Global Development, INDIACom 2023 ; : 1001-1007, 2023.
Article in English | Scopus | ID: covidwho-20235248

ABSTRACT

COVID-19 is an infectious disease caused by newly discovered coronavirus. Currently, RT-PCR and Rapid Testing are used to test a person against COVID-19. These methods do not produce immediate results. Hence, we propose a solution to detect COVID-19 from chest X-ray images for immediate results. The solution is developed using a convolutional neural network architecture (VGG-16) model to extract features by transfer learning and a classification model to classify an input chest X-ray image as COVID-19 positive or negative. We introduced various parameters and computed the impact on the performance of the model to identify the parameters with high impact on the model's performance. The proposed solution is observed to provide best results compared to the existing ones. © 2023 Bharati Vidyapeeth, New Delhi.

19.
2022 IEEE Conference on Interdisciplinary Approaches in Technology and Management for Social Innovation, IATMSI 2022 ; 2022.
Article in English | Scopus | ID: covidwho-20234620

ABSTRACT

The COVID pandemic is causing outrageous interference in everyday life and financial activity. Close to two years after the presence of COVID, WHO allotted the variety B.l.l.529 a variety of concern, named 'Omicron'. Online diversion data assessment is created and transformed into a more renowned subject of investigation. In this paper, a sizably voluminous heap of appraisals and assessments are culminated with online redirection information. The evaluations and appearances of Twitter electronic diversion stage clients are summarised and researched by considering sentiment analysis by utilising various natural language processing techniques based on positive, negative, and neutral tweets. All potential outcomes are considered for investigating the feelings of Twitter clients. For the most part, tweets are assessed clearly, and this assessment ensures the headway of this investigation study. Different kinds of analyzers are utilised and measured. The 'TextBlob Sentiment Analyzer' has given the highest polarity score based on positivity, negativity, and neutrality rates in terms of inspiration, pessimism, and impartiality. A total dataset is fully determined and classified with all the analyzers, and a comparative result is also measured to find the ideal analyzer. It is intended to apply boosting machine learning methods to increase the accuracy of the proposed architecture before further implementation. © 2022 IEEE.

20.
ArchNet-IJAR : International Journal of Architectural Research ; 17(2):301-322, 2023.
Article in English | ProQuest Central | ID: covidwho-20233076

ABSTRACT

PurposeThe present research aims to explore the relationship between the university's new identity and its architectural design, and to investigate the impact of COVID-19 pandemic on this model. It also aims to analyze the declared identity of the new Egyptian universities.Design/methodology/approachTo formulate the hypothesis of the relational model, the research started with the literature related to physical and nonphysical variables of university's identity (organizational and visual identity) and the impact of the pandemic on its identity. Secondly, an online questionnaire targeting academic leaders was conducted to identify the relative importance of the selected variables of university's identity pre- and post-pandemic. Thirdly, a content analysis of the new Egyptian universities' identity was used to track the correlation between the selected variables based on information accessible on universities' websites. Finally, the results of the content analysis and the questionnaire were compared to test the hypothesis.FindingsThe study reveals the most important physical variable of university's new identity pre- and post-pandemic is technological infrastructure and flexible design, while the least important is university's unique design. The results highlight that the universities need to revisit the declared identity to reflect the new challenges posed by COVID-19.Originality/valueThis study is considered one of the first researches that links the physical and nonphysical variables of university's new identity. The current study contributes to analyzing the impact of COVID-19 on university identity and architecture.

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