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1.
Emerging Aquatic Contaminants: One Health Framework for Risk Assessment and Remediation in the Post COVID-19 Anthropocene ; : 101-126, 2023.
Article in English | Scopus | ID: covidwho-20233998

ABSTRACT

A highly transmissible and pathogenic Coronavirus SARS-CoV-2 has caused the COVID-19 pandemic, which severely affected human health and impacted negatively on the environment. In this review, we discuss the extent of the generation of COVID waste, and how its disposal can influence the environment. We have especially emphasized the COVID-related biomedical waste management. An attempt has also been made to identify several challenges encountered in India. Studies have indicated an altered water usage pattern, which increased megacities' water footprint in India. Enhanced domestic sewage discharge resulted in higher fecal coliform count in water bodies. Disposal of COVID biomedical waste (CBW) and personal protective equipment (PPE) resulted in a huge amount of single-use plastics (SUPs);which in turn cause the long-term risk of micro- and nano-plastic in the environment. This review also aims to put up the need for well-equipped infrastructure, efficient treatment facility, and public availability of CBW data in India to make effective policies and sustainable solutions for long-term goals. © 2023 Elsevier Inc. All rights reserved.

2.
Lecture Notes in Mechanical Engineering ; : 473-478, 2023.
Article in English | Scopus | ID: covidwho-20233294

ABSTRACT

The ominous spread of the COVID-19 pandemic is attributed to the droplets respired during coughing, sneezing or speaking. These droplets undergo evaporation to become aerosols, which, along with the larger droplets, are believed to ultimately spread the virus. In this current work, a small, enclosed region like an elevator (containing a COVID infected passenger) is considered where the risk of infection is high as the commonly practiced norm of social distancing is not possible. Numerical simulations are performed using OpenFOAM. Two different types of elevators – one equipped with a sliding door and the other with a collapsible gate, are considered and the change in droplet behavior is examined. Certain parameters pertaining to the risk of virus transmission have been quantified and assessed thoroughly, such as the percentage of droplets floating in the height range from a person's waist height to his mouth height, the radial span of the floating droplets from the infected passenger's mouth. From these parameters, the safety measures to be adopted by other copassengers can be determined. After an extensive study, it has been found that the collapsible gate elevator is safer than the sliding door elevator along with added advantages in the context of disease transmission. © 2023, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.

3.
Cognitive Science and Technology ; : 679-691, 2023.
Article in English | Scopus | ID: covidwho-2273152

ABSTRACT

The appearance of a novel coronavirus (COVID-19) has presented an immense challenge for the healthcare community around the world. Many patients with COVID-19 have primary cardiovascular (CV) sickness or create intense heart injury throughout the infection. These patients are at exceptionally great danger from COVID-19 because of their fragility and powerlessness for a myocardial involvement. Good comprehension of the exchange between COVID-19 and CV illness is required for these patients' ideal administration. As a growing range of applications for patient management and system incorporation in real time is available, artificial intelligence (AI) can play a decisive role in the emergency department (ED), in fields such as intelligent monitoring, the estimation of clinical results, and resource planning. The proposed system aims to develop an adaptation of a smart medical evaluation method to decide if people with an underlying cardiovascular health disorder would contract COVID-19 based on the limited range of pre-selected variables deemed scientifically necessary and easily calculated when designing clinical judgment regulations. © 2023, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.

4.
Lett Appl Microbiol ; 74(6): 992-1000, 2022 Jun.
Article in English | MEDLINE | ID: covidwho-2267626

ABSTRACT

Chikungunya is a fast-mutating virus causing Chikungunya virus disease (ChikvD) with a significant load of disability-adjusted life years (DALY) around the world. The outbreak of this virus is significantly higher in the tropical countries. Several experiments have identified crucial viral-host protein-protein interactions (PPIs) between Chikungunya Virus (Chikv) and the human host. However, no standard database that catalogs this PPI information exists. Here we develop a Chikv-Human PPI database, ChikvInt, to facilitate understanding ChikvD disease pathogenesis and the progress of vaccine studies. ChikvInt consists of 109 interactions and is available at www.chikvint.com.


Subject(s)
Chikungunya Fever , Chikungunya virus , Chikungunya Fever/pathology , Humans
5.
Physics of Fluids ; 35(1), 2023.
Article in English | Scopus | ID: covidwho-2186668

ABSTRACT

The education sector has suffered a catastrophic setback due to the ongoing COVID pandemic, with classrooms being closed indefinitely. The current study aims to solve the existing dilemma by examining COVID transmission inside a classroom and providing long-term sustainable solutions. In this work, a standard 5 × 3 × 5 m3 classroom is considered where 24 students are seated, accompanied by a teacher. A computational fluid dynamics simulation based on OpenFOAM is performed using a Eulerian-Lagrangian framework. Based on the stochastic dose-response framework, we have evaluated the infection risk in the classroom for two distinct cases: (i) certain students are infected and (ii) the teacher is infected. If the teacher is infected, the probability of infection could reach 100% for certain students. When certain students are infected, the maximum infection risk for a susceptible person reaches 30%. The commonly used cloth mask proves to be ineffective in providing protection against infection transmission, reducing the maximum infection probability by approximately 26% only. Another commonly used solution in the form of shields installed on desks has also failed to provide adequate protection against infection, reducing the infection risk only by 50%. Furthermore, the shields serve as a source of fomite mode of infection. Screens suspended from the ceiling, which entrap droplets, have been proposed as a novel solution that reduces the infection risk by 90% and 95% compared to the no screen scenario besides being completely devoid of fomite infection mode. The manifestation of infection risk in the domain was investigated, and it was found out that in the case of screens the maximum infection risk reached the value of only 0.2 (20% infection probability) in 1325 s. © 2023 Author(s).

6.
Pandemic Risk, Response, and Resilience: COVID-19 Responses in Cities around the World ; : 143-156, 2022.
Article in English | Scopus | ID: covidwho-2035620

ABSTRACT

The pandemic caused by the deadly Coronavirus has spread across the entire world, impacting the lives and livelihood of billions of people living in different regions. Even the Arctic and Subarctic regions are also not exempted from the spread and effect of this pandemic. In this study, we emphasize the COVID-19 pandemic situation of the Arctic and Subarctic regions. Even though the population density of these regions is significantly less, the eminent impact due to COVID-19 remains the same, perhaps more, considering the harsh weather, less communication, and health facilities. We have analyzed seasonal pandemic scenarios, risks, governance responses, and resilience of the locals as well as governments in and around the Arctic and Subarctic regions of Canada, Finland, Greenland, Iceland, Norway, Russia, Sweden, and the United States (Alaska). Despite these regions being extreme, the results reveal that the devastating effect of the pandemic remains almost the same at par with the context of the significantly lower population density. However, the governance shows a silver lining during this period, proving that humankind can win any battle for its sustenance with proper governance and management actions. © 2022 Elsevier Inc. All rights reserved.

7.
Physics of Fluids ; 34(8), 2022.
Article in English | Scopus | ID: covidwho-2017015

ABSTRACT

A numerical analysis using OpenFOAM has been performed in this work to investigate the infection risk due to droplet dispersal in an enclosed environment resembling an elevator, since infection risk in such confined places is very high. The effect of two scenarios on droplet dispersal, namely, the quiescent and the fan-driven ventilation, both subjected to various climatic conditions (of temperature and humidity) ranging from cold-humid (15 °C, 70% relative humidity) to hot-dry (30 °C, 30% relative humidity) have been studied. A risk factor derived from a dose-response model constructed upon the temporally averaged pathogen quantity existing around the commuter's mouth is used to quantify the risk of infection through airborne mode. It is found that the hot, dry quiescent scenario poses the greatest threat of infection (spatio-averaged risk factor 42%), whereas the cold-humid condition poses the least risk of infection (spatio-averaged risk factor 30%). The proper fan speed is determined for the epidemiologically safe operation of the elevator. The fan ventilation scenario with 1100 RPM (having a spatio-averaged risk factor of 10%) decreases the risk of infection by 67% in a hot, dry climatic condition as compared to a quiescent scenario and significantly in other climatic ambiences as well. The deposition potential of aerosolized droplets in various parts of the respiratory tract, namely, the extrathoracic and the alveolar and bronchial regions, has been analyzed thoroughly because of the concomitant repercussions of infection in various depths of the respiratory region. In addition, the airborne mode of infection and the fomite mode of infection (infection through touch) have also been investigated for both the ventilation scenarios. © 2022 Author(s).

8.
German Workshop on Medical Image Computing, 2022 ; : 38-43, 2022.
Article in English | Scopus | ID: covidwho-1826269
9.
Virtual Reality and Intelligent Hardware ; 4(1):55-75, 2022.
Article in English | Scopus | ID: covidwho-1703232

ABSTRACT

Background: Social distancing is an effective way to reduce the spread of the SARS-CoV-2 virus. Many students and researchers have already attempted to use computer vision technology to automatically detect human beings in the field of view of a camera and help enforce social distancing. However, because of the present lockdown measures in several countries, the validation of computer vision systems using large-scale datasets is a challenge. Methods: In this paper, a new method is proposed for generating customized datasets and validating deep-learning-based computer vision models using virtual reality (VR) technology. Using VR, we modeled a digital twin (DT) of an existing office space and used it to create a dataset of individuals in different postures, dresses, and locations. To test the proposed solution, we implemented a convolutional neural network (CNN) model for detecting people in a limited-sized dataset of real humans and a simulated dataset of humanoid figures. Results: We detected the number of persons in both the real and synthetic datasets with more than 90% accuracy, and the actual and measured distances were significantly correlated (r=0.99). Finally, we used intermittent-layer- and heatmap-based data visualization techniques to explain the failure modes of a CNN. Conclusions: A new application of DTs is proposed to enhance workplace safety by measuring the social distance between individuals. The use of our proposed pipeline along with a DT of the shared space for visualizing both environmental and human behavior aspects preserves the privacy of individuals and improves the latency of such monitoring systems because only the extracted information is streamed. © 2021 Beijing Zhongke Journal Publishing Co. Ltd

10.
27th ACM Symposium on Virtual Reality Software and Technology, VRST 2021 ; 2021.
Article in English | Scopus | ID: covidwho-1596233

ABSTRACT

The Covid-19 pandemic resulted in a catastrophic loss to global economies, and social distancing was consistently found to be an effective means to curb the virus’s spread. However, it is only as effective when every individual partakes in it with equal alacrity. Past literature outlined scenarios where computer vision was used to detect people and to enforce social distancing automatically. We have created a Digital Twin (DT) of an existing laboratory space for remote monitoring of room occupancy and automatically detecting violation of social distancing. To evaluate the proposed solution, we have implemented a Convolutional Neural Network (CNN) model for detecting people, both in a limited-sized dataset of real humans, and a synthetic dataset of humanoid figures. Our proposed computer vision models are validated for both real and synthetic data in terms of accurately detecting persons, posture, and intermediate distances among people. © 2021 Copyright held by the owner/author(s).

11.
5th International Conference on Cloud and Big Data Computing, ICCBDC 2021 ; : 52-56, 2021.
Article in English | Scopus | ID: covidwho-1596232

ABSTRACT

The ongoing Covid-19 pandemic has made it challenging for large scale data collection, in particular for Convolutional Neural Network (CNN)-based computer vision systems. Additionally, there are numerous circumstances where security, privacy, and limitations pertaining to the accessibility of the required equipment make it arduous to validate computer vision systems with real-world datasets. In this paper, we investigated the possibilities of using synthetic datasets, generated from Virtual Environments (VE) for training and validation of CNN models. We present two use cases where the above-mentioned circumstances play a vital role in preparing the datasets and validating the model with large-scale datasets. By developing and leveraging a three-dimensional Digital Twin (DT), we produce large scale datasets for validating social distancing in workspaces;and in the context of semi-autonomous vehicles, we evaluate how a CNN-based object detection model would perform in an Indian road scenario. © 2021 ACM.

12.
Technology and Disability ; 33(4):319-338, 2021.
Article in English | Scopus | ID: covidwho-1551473

ABSTRACT

BACKGROUND: Users with Severe Speech and Motor Impairment (SSMI) often use a communication chart through their eye gaze or limited hand movement and care takers interpret their communication intent. There is already significant research conducted to automate this communication through electronic means. Developing electronic user interface and interaction techniques for users with SSMI poses significant challenges as research on their ocular parameters found that such users suffer from Nystagmus and Strabismus limiting number of elements in a computer screen. This paper presents an optimized eye gaze controlled virtual keyboard for English language with an adaptive dwell time feature for users with SSMI. OBJECTIVE: Present an optimized eye gaze controlled English virtual keyboard that follows both static and dynamic adaptation process. The virtual keyboard can automatically adapt to reduce eye gaze movement distance and dwell time for selection and help users with SSMI type better without any intervention of an assistant. METHODS: Before designing the virtual keyboard, we undertook a pilot study to optimize screen region which would be most comfortable for SSMI users to operate. We then proposed an optimized two-level English virtual keyboard layout through Genetic algorithm using static adaptation process;followed by dynamic adaptation process which tracks users' interaction and reduces dwell time based on a Markov model-based algorithm. Further, we integrated the virtual keyboard for a web-based interactive dashboard that visualizes real-time Covid data. RESULTS: Using our proposed virtual keyboard layout for English language, the average task completion time for users with SSMI was 39.44 seconds in adaptive condition and 29.52 seconds in non-adaptive condition. Overall typing speed was 16.9 lpm (letters per minute) for able-bodied users and 6.6 lpm for users with SSMI without using any word completion or prediction features. A case study with an elderly participant with SSMI found a typing speed of 2.70 wpm (words per minute) and 14.88 lpm (letters per minute) after 6 months of practice. CONCLUSIONS: With the proposed layout for English virtual keyboard, the adaptive system increased typing speed statistically significantly for able bodied users than a non-adaptive version while for 6 users with SSMI, task completion time reduced by 8.8% in adaptive version than nonadaptive one. Additionally, the proposed layout was successfully integrated to a web-based interactive visualization dashboard thereby making it accessible for users with SSMI. © 2021-IOS Press. All rights reserved.

13.
4th IEEE International Conference on Computing, Power and Communication Technologies, GUCON 2021 ; 2021.
Article in English | Scopus | ID: covidwho-1526272

ABSTRACT

The COVID-19 pandemic had brought about a standstill to many activities across the world. Health experts, doctors and academic investigators across the globe have been attempting to come to terms with the trying demands posed on the human population due to the pandemic. This paper attempts to develop a precise model for examination of and forecasting effective measures to be implemented during different situations to limit the impact of COVID-19. It also addresses various trials and tests faced while using machine learning algorithms. For the experimental analysis different parameters such as countries (China, America, India, South Africa and Italy), month, types of measures to be undertaken (awareness campaigns, economic measures, domestic travel restrictions, health screening at airports and psychological assistance involving medical social work) and date of implementation details are considered. COVID-19 epidemic determent procedures by recognizing, evaluating danger situation and probable paths of epidemic using a machine-learning technique have been explored. A proposed methodology to forecast extension of lockdown in order to exterminate COVID-19 is presented wherein SVM regression technique is used for prediction of actual extension of lockdown during the pandemic situation. © 2021 IEEE.

14.
24th International Conference on Medical Image Computing and Computer Assisted Intervention, MICCAI 2021 ; 12907 LNCS:304-314, 2021.
Article in English | Scopus | ID: covidwho-1469652

ABSTRACT

Automatic segmentation of lung lesions in computer tomography has the potential to ease the burden of clinicians during the Covid-19 pandemic. Yet predictive deep learning models are not trusted in the clinical routine due to failing silently in out-of-distribution (OOD) data. We propose a lightweight OOD detection method that exploits the Mahalanobis distance in the feature space. The proposed approach can be seamlessly integrated into state-of-the-art segmentation pipelines without requiring changes in model architecture or training procedure, and can therefore be used to assess the suitability of pre-trained models to new data. We validate our method with a patch-based nnU-Net architecture trained with a multi-institutional dataset and find that it effectively detects samples that the model segments incorrectly. © 2021, Springer Nature Switzerland AG.

15.
2nd International Conference for Emerging Technology, INCET 2021 ; 2021.
Article in English | Scopus | ID: covidwho-1379533

ABSTRACT

In the era of cloud technology, all the emails sent from one person to another needs to be secure. Security attacks like email phishing, EBomb, DNS spoofing and so on have become a trend in this digital era. Among the said attacks, email phishing has been observed to be most common to be used by attackers to trap victims using fake email with embedded malwares, which is not made aware of non-cyber professionals. With the current pandemic that is Covid-19, which is storming the whole world and enforcing people all over to stay indoors, thus indirectly increasing the online digital footprints of all, so there's an increase in SMB(Server message block) port all over the world which is leading attackers to find their victims easily by unique, dynamic and various other vulnerabilities which no standard virus, malware detection software which was before being provided by the IT companies to its employees and for general internet users;have proven to be not that effective. so we propose a different approach along with a tool kit that will work in identifying the embedded malware files and fake websites more dynamically and effectively. © 2021 IEEE.

16.
Journal of Association of Physicians of India ; 69(6):36-40, 2021.
Article in English | Scopus | ID: covidwho-1361106

ABSTRACT

Background and Purpose: Various neurological complications have been reported in association with COVID-19. We report our experience of COVID-19 with stroke at a single center over a period of eight months spanning 1 March to 31 October 2020. Methods: We recruited all patients admitted to Internal Medicine with an acute stroke, who also tested positive for COVID-19 on RTPCR. We included all stroke cases in our analysis for prediction of in-hospital mortality, and separately analyzed arterial infarcts for vascular territory of ischemic strokes. Results: There were 62 stroke cases among 3923 COVID-19 admissions (incidence 1.6%). Data was available for 58 patients {mean age 52.6 years;age range 17–91;F/M=20/38;24% (14/58) aged ≤40;51% (30/58) hypertensive;36% (21/58) diabetic;41% (24/58) with O2 saturation <95% at admission;32/58 (55.17 %) in-hospital mortality}. Among 58 strokes, there were 44 arterial infarcts, seven bleeds, three arterial infarcts with associated cerebral venous sinus thrombosis, two combined infarct and bleed, and two of indeterminate type. Among the total 49 infarcts, Carotid territory was the commonest affected (36/49;73.5%), followed by vertebrobasilar (7/49;14.3%) and both (6/49;12.2%). Concordant arterial block was seen in 61% (19 of 31 infarcts with angiography done). ‘Early stroke’ (within 48 hours of respiratory symptoms) was seen in 82.7% (48/58) patients. Patients with poor saturation at admission were older (58 vs 49 years) and had more comorbidities and higher mortality (79% vs 38%). Mortality was similar in young strokes and older patients, although the latter required more intense respiratory support. Logistic regression analysis showed that low Glasgow coma score (GCS) and requirement for increasing intensity of respiratory support predicted in-hospital mortality. Conclusions: We had a 1.6% incidence of COVID-19 related stroke of which the majority were carotid territory infarcts. In-hospital mortality was 55.17%, predicted by low GCS at admission. © 2021 Journal of Association of Physicians of India. All rights reserved.

18.
J. Phys. Conf. Ser. ; 1797, 2021.
Article in English | Scopus | ID: covidwho-1139929

ABSTRACT

Novel Corona Virus has spread to 188 countries around the world which made the people infected, facing moderate respiratory illness. Currently one of the major strategies to deal with COVID-19 and reduce community transmission of infections is the frequent use of hand sanitizers. However, a large section of common mass is unable to buy them due to higher price. Therefore, an approach has been presented here to produce cheaper sanitizers with easily available herbal ingredients like Aloe Vera gel, boiled water, surgical spirit, Glycerine etc. The estimated making cost of 100 ml of sanitizer was 16 rupees. The mass production of this sanitizer can be very effective for large scale use of sanitizers by common people. © 2021 Institute of Physics Publishing. All rights reserved.

20.
International Organisations Research Journal ; 15(3):1-18, 2020.
Article in English | Scopus | ID: covidwho-1050782

ABSTRACT

This article explores the issue of data localization by capturing all relevant debates and discussion around it. It investigates issues related to data management, storage, and ownership, followed by the data safety and security concerns of developing countries in a rapidly changing digital world. Storing data locally can be an effective way to tackle these concerns. Data localization can bring the data storing market price down. It can inject sufficient incentive to spur technological innovation in the system. If workable templates of data safety and privacy frameworks can be built locally, consumers’ rights will also be protected. Data localization also has the potential to positively contribute to effective redressal of damages in developing countries related to data leakage. The COVID-19 pandemic has considerably sharpened existing conflicts in the e-commerce ecosystem. Treating this crisis as an opportunity and pushing for digital data safety and security by means of data localization is the ideal strategy for developing and emerging economies to adopt. © 2020

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