AI and the coronavirus fight

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Offline Md. Sumon-ul Islam

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AI and the coronavirus fight
« on: April 15, 2020, 09:37:18 PM »
How artificial intelligence is taking on COVID-19?

As the COVID-19 coronavirus outbreak continues to spread across the globe, companies and researchers are looking to use artificial intelligence as a way of addressing the challenges of the virus. Here are just some of the projects using AI to address the coronavirus outbreak.

Using AI to find drugs that target the virus

A number of research projects are using AI to identify drugs that were developed to fight other diseases but which could now be repurposed to take on coronavirus. By studying the molecular setup of existing drugs with AI, companies want to identify which ones might disrupt the way COVID-19 works.
BenevolentAI, a London-based drug-discovery company, began turning its attention towards the coronavirus problem in late January. The company's AI-powered knowledge graph can digest large volumes of scientific literature and biomedical research to find links between the genetic and biological properties of diseases and the composition and action of drugs.

The company had previously been focused on chronic disease, rather than infections, but was able to retool the system to work on COVID-19 by feeding it the latest research on the virus. "Because of the amount of data that's being produced about COVID-19 and the capabilities we have in being able to machine-read large amounts of documents at scale, we were able to adapt [the knowledge graph] so to take into account the kinds of concepts that are more important in biology, as well as the latest information about COVID-19 itself," says Olly Oechsle, lead software engineer at BenevolentAI.

While a large body of biomedical research has built up around chronic diseases over decades, COVID-19 only has a few months' worth of studies attached to it. But researchers can use the information that they have to track down other viruses with similar elements, see how they function, and then work out which drugs could be used to inhibit the virus.

"The infection process of COVID-19 was identified relatively early on. It was found that the virus binds to a particular protein on the surface of cells called ACE2. And what we could with do with our knowledge graph is to look at the processes surrounding that entry of the virus and its replication, rather than anything specific in COVID-19 itself. That allows us to look back a lot more at the literature that concerns different coronaviruses, including SARS, etc. and all of the kinds of biology that goes on in that process of viruses being taken in cells," Oechsle says.

The system suggested a number of compounds that could potentially have an effect on COVID-19 including, most promisingly, a drug called Baricitinib. The drug is already licensed to treat rheumatoid arthritis. The properties of Baricitinib mean that it could potentially slow down the process of the virus is taken up into cells and reduce its ability to infect lung cells.

More research and human trials will be needed to see whether the drug has the effects AI predicts. BenevolentAI has announced that Ely Lilly and the US National Institute for Allergies and Infectious Diseases (NIAID) will begin investigating Baricitinib's safety and effectiveness in treating COVID-19 as part of clinical trials from this month. The results of the trials are expected within the next two months.

Shedding light on the structure of COVID-19

DeepMind, the AI arm of Google's parent company Alphabet, is using data on genomes to predict organisms' protein structure, potentially shedding light on which drugs could work against COVID-19.

DeepMind has released a deep-learning library called AlphaFold, which uses neural networks to predict how the proteins that make up an organism curve or crinkle, based on their genome. Protein structures determine the shape of receptors in an organism's cells. Once you know what shape the receptor is, it becomes possible to work out which drugs could bind to them and disrupt vital processes within the cells: in the case of COVID-19, disrupting how it binds to human cells or slowing the rate it reproduces, for example.

After training up AlphaFold on large genomic datasets, which demonstrate the links between an organism's genome and how its proteins are shaped, DeepMind set AlphaFold to work on COVID-19's genome.

"We emphasize that these structure predictions have not been experimentally verified, but hope they may contribute to the scientific community's interrogation of how the virus functions, and serve as a hypothesis generation platform for future experimental work in developing therapeutics," DeepMind said. Or, to put it another way, DeepMind hasn't tested out AlphaFold's predictions outside of a computer, but it's putting the results out there in case researchers can use them to develop treatments for COVID-19.

Detecting the outbreak and spread of new diseases

Artificial-intelligence systems were thought to be among the first to detect that the coronavirus outbreak, back when it was still localized to the Chinese city of Wuhan, could become a full-on global pandemic.

It's thought that AI-driven HealthMap, which is affiliated with the Boston Children's Hospital, picked up the growing cluster of unexplained pneumonia cases shortly before human researchers, although it only ranked the outbreak's seriousness as 'medium'.

"We identified the earliest signs of the outbreak by mining in Chinese language and local news media -- WeChat, Weibo -- to highlight the fact that you could use these tools to basically uncover what's happening in a population," John Brownstein, professor of Harvard Medical School and chief innovation officer at Boston Children's Hospital, told the Stanford Institute for Human-Centered Artificial Intelligence's COVID-19 and AI virtual conference.

Human epidemiologists at ProMed, an infectious-disease-reporting group, published their own alert just half an hour after HealthMap, and Brownstein also acknowledged the importance of human virologists in studying the spread of the outbreak.

"What we quickly realized was that as much it's easy to scrape the web to create a really detailed line list of cases around the world, you need an army of people, it can't just be done through machine learning and web scraping," he said. HealthMap also drew on the expertise of researchers from universities across the world, using "official and unofficial sources" to feed into the line list.

The data generated by HealthMap has been made public, to be combed through by scientists and researchers looking for links between the disease and certain populations, as well as containment measures. The data has already been combined with data on human movements, gleaned from Baidu, to see how population mobility and control measures affected the spread of the virus in China.

HealthMap has continued to track the spread of coronavirus throughout the outbreak, visualizing its spread across the world by time and location.

Spotting signs of a COVID-19 infection in medical images

Canadian startup DarwinAI has developed a neural network that can screen X-rays for signs of COVID-19 infection. While using swabs from patients is the default for testing for coronavirus, analyzing chest X-rays could offer an alternative to hospitals that don't have enough staff or testing kits to process all their patients quickly.

Darwin AI released COVID-Net as an open-source system, and "the response has just been overwhelming", says DarwinAI CEO Sheldon Fernandez. More datasets of X-rays were contributed to train the system, which has now learned from over 17,000 images, while researchers from Indonesia, Turkey, India and other countries are all now working on COVID-19. "Once you put it out there, you have 100 eyes on it very quickly, and they'll very quickly give you some low-hanging fruit on ways to make it better," Fernandez said.

The company is now working on turning COVID-Net from a technical implementation to a system that can be used by healthcare workers. It's also now developing a neural network for risk-stratifying patients that have contracted COVID-19 as a way of separating those with the virus who might be better suited to recovering at home in self-isolation, and those who would be better coming into hospital.

Monitoring how the virus and lockdown is affecting mental health

Johannes Eichstaedt, assistant professor in Stanford University's department of psychology, has been examining Twitter posts to estimate how COVID-19, and the changes that it's brought to the way we live our lives, is affecting our mental health.

Using AI-driven text analysis, Eichstaedt queried over two million tweets hashtagged with COVID-related terms during February and March, and combined it with other datasets on relevant factors including the number of cases, deaths, demographics and more, to illuminate the virus' effects on mental health.

The analysis showed that much of the COVID-19-related chat in urban areas was centered on adapting to living with, and preventing the spread of, the infection. Rural areas discussed adapting far less, which the psychologist attributed to the relative prevalence of the disease in urban areas compared to rural, meaning those in the country have had less exposure to the disease and its consequences.

There are also differences in how the young and old are discussing COVID-19. "In older counties across the US, there's talk about Trump and the economic impact, whereas, in young counties, it's much more problem-focused coping; the one language cluster that stands out there is that in counties that are younger, people talk about washing their hands," Eichstaedt said.

"We really need to measure the wellbeing impact of COVID-19, and we very quickly need to think about scalable mental healthcare and now is the time to mobilize resources to make that happen," Eichstaedt told the Stanford virtual conference.

Forecasting how coronavirus cases and deaths will spread across cities – and why

Google-owned machine-learning community Kaggle is setting a number of COVID-19-related challenges to its members, including forecasting the number of cases and fatalities by the city as a way of identifying exactly why some places are hit worse than others.

"The goal here isn't to build another epidemiological model… there are lots of good epidemiological models out there. Actually, the reason we have launched this challenge is to encourage our community to play with the data and try and pick apart the factors that are driving the difference in transmission rates across cities," Kaggle's CEO Anthony Goldbloom told the Stanford conference.

Currently, the community is working on a dataset of infections in 163 countries from two months of this year to develop models and interrogate the data for factors that predict spread.

Most of the community's models have been producing feature-importance plots to show which elements may be contributing to the differences in cases and fatalities. So far, said Goldbloom, latitude and longitude are showing up as having a bearing on COVID-19 spread. The next generation of machine-learning-driven feature-importance plots will tease out the real reasons for geographical variances.

"It's not the country that is the reason that transmission rates are different in different countries; rather, it's the policies in that country, or it's the cultural norms around hugging and kissing, or it's the temperature. We expect that as people iterate on their models, they'll bring in more granular datasets and we'll start to see these variable-importance plots becoming much more interesting and starting to pick apart the most important factors driving differences in transmission rates across different cities. This is one to watch," Goldbloom added.

Source: https://www.zdnet.com/article/ai-and-the-coronavirus-fight-how-artificial-intelligence-is-taking-on-covid-19/
Md.Sumon-ul Islam
BSc in Computer Science & Engineering 
Daffodil International University

Offline Md. Sumon-ul Islam

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Re: AI and the coronavirus fight
« Reply #1 on: April 15, 2020, 09:51:21 PM »
Responding to the fighting against COVID-19, AI4EU members have contributed ideas and grouped for possible solution developments on the AI4EU Platform and among its community. AI4EU Web Café is also enabling the innovators and developers of the European AI community to present the latest AI developments in creating tools and solutions in the effort to help frontline forces in the fight against the COVID-19.

The week of 13 April 2020, AI4EU Web Café hosts two sessions, bringing a freshly developed solution in the effort to help the frontline medical staff to protect themselves effectively while providing care to those in need.

The special COVID-19 Web Café is titled: The CIIRC RP95-3D Protective Half-Mask – The Fast Track from Scientific Idea to The Real Production as The CIIRC’s Contribution in The Fight Against the Coronavirus Pandemic. The Speakers are Dr. Vit Dockal and Dr. Pavel Burget from the CIIRC of Czech Technical University in Prague.

On a regular weekly Web Café session next week, AI enthusiasts also have a chance to learn about the natural and artificial intelligence on Web.

Dr. Fabien Gandon is a Research Director and Senior Researcher at Inria, France, will present a talk titled “Linking Natural and Artificial Intelligence on the Web”.

The talk’s motivation was that the Web was essentially perceived as a huge distributed library of linked pages, a worldwide documentary space for humans. In the mid-90s, with wikis and forums, the Web was re-opened in read-write mode and this paved the way to numerous new social media applications.

The Web is now space where three billion users interact with billions of pages and numerous software. In parallel, extensions of the Web were developed and deployed to make it more and more machine-friendly supporting the publication and consumption by software agents of worldwide linked data published on a semantic Web.

As a result, the Web became a collaborative space for natural and artificial intelligence raising the problem of supporting these worldwide interactions. In particular, these hybrid communities require reconciling the formal semantics of computer science (e.g. logics, ontologies, typing systems, etc.) on which the Web architecture is built, with the soft semantics of people (e.g. posts, tags, status, etc.) on which the Web content is built. This talk will present some of the challenges and progresses in building this evolution of a Web toward a universal space to link many kinds of intelligence.

Source: https://www.ai4eu.eu/news/fighting-covid-19-ai-ai4eu-web-cafe-sessions-host-latest-developments-and-beyond
Md.Sumon-ul Islam
BSc in Computer Science & Engineering 
Daffodil International University

Offline Md. Sumon-ul Islam

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Re: AI and the coronavirus fight
« Reply #2 on: April 15, 2020, 09:59:33 PM »
COVID-19: AI can be a useful tool to combat pandemics, provided its use, including for tracking, is responsible, ethical and human-centered, says PACE rapporteur

“Although Artificial Intelligence (AI) may prove a useful ally in overcoming the COVID-19 pandemic, we should not forget that its use may raise serious human rights concerns that can undermine the trust placed in governments,” said Deborah Bergamini (Italy, EPP/CD), PACE rapporteur on the need for democratic governance of Artificial Intelligence.

Echoing concerns expressed by other international bodies, Ms. Bergamini warned that, while there was a need for innovative efforts to confront the pandemic, “human rights, civil liberties and rule of law principles may be exposed or damaged if we do not tread this path with great caution”.

“The use of AI and surveillance technology to track the spread of the Coronavirus, or enhance monitoring and detection capabilities, may seem an effective response, but any excessive or unethical use may result in grave violations of the right to privacy and non-discrimination,” she added.

“AI cannot be considered a silver bullet for pandemics, but it is definitely a powerful tool that can help generate information to enable more precise and effective strategies for the prevention of, detection of and response to outbreaks, thus contributing to public health, if used properly,” she added.

“Α responsible, ethical and human-centered AI is needed now more than ever. It is crucial that the use of these tools is limited both in terms of purpose and time, and that national authorities scale back any newly-acquired monitoring capabilities after the end of this pandemic,” she concluded.

Source: https://pace.coe.int/en/news/7844/covid-19-ai-can-be-a-useful-tool-to-combat-pandemics-provided-its-use-including-for-tracking-is-responsible-ethical-and-human-centred-says-pace-rapporteur
Md.Sumon-ul Islam
BSc in Computer Science & Engineering 
Daffodil International University