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Showing posts from November, 2023

Smart Garments

  Emergence of intelligent fabric that can non-intrusively sense data can be extremely valuable in observing health stats like body temperature, blood pressure, pulse rate, respiration rate, movement – specially for patients, senior citizens or infants/children needing continuous care. View more   Smart garments

Transforming Mental Health Through Virtual Reality

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 Across the globe, countless people are navigating the complex terrain of mental health challenges. The fact that more people are reaching out for help shines a spotlight on just how critical this challenge is for individuals, families, communities, and even economies. When we delve into the numbers, we see the intricate connection between mental well-being and stress. It's especially poignant for young adults, those aged 18 to 25, who are particularly vulnerable. To make things worse depression and anxiety carry a hefty burden of  $1 trillion annually to the world economy. Despite more diagnoses and easier access to support, there's a significant number of people who can't afford the help they need. The current shortage of mental health professionals only adds to the challenge. These are not mearly numbers; they encapsulate the stories of individuals, families, and entire communities grappling with the silent burden of mental health challenges. This is not a just statistic

How can we design better software for the life sciences?

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 Transparency in Information Analysis One of the main reasons for developing life science software is to automate some part of an analytical process through the use of algorithms, easing the burden on scientists. Often, most of the logic of an algorithm tends to be abstracted away from the users - it’s a ‘black box’ that no one can see into to make sense of. Information Hierarchy A major challenge in the life sciences is the scale and richness of biological data. When using software tools for accessing or manipulating large biological datasets, it is easy to become overwhelmed, miss what you are looking for, and miss opportunities for discovery. Life Sciences Software Flexible Workflows Scientific workflows can switch rapidly from the ordinary to the novel as researchers respond to signals in their data. Software interfaces need to support streamlined completion of routine tasks as well as facilitating detours for more in-depth data exploration. Encouraging Exploration of Results Scien

5 ways to use generative AI in healthcare

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  Facilitating medical training and simulations Generative AI in healthcare can come up with realistic simulations replicating a large variety of health conditions, allowing medical students and professionals to practice in a risk-free, controlled environment. AI can generate patient models with different diseases or help simulate a surgery or another medical procedure. Assisting in clinical diagnosis Generating high-quality medical images. Hospitals can employ generative AI tools to enhance the traditional AI’s diagnostic abilities. This technology can convert poor-quality scans into high-resolution medical images with great details, apply anomaly detection AI algorithms, and present the results to radiologists. Real-life examples A team of researchers experimented with Generative Adversarial Network (GAN) models to extract and enhance features in low-quality medical scans, transforming them into high-resolution images. This approach was tested on brain MRI scans, dermoscopy, retinal

Virtual Reality Therapy for Mental Health

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Virtual Reality (VR) is quickly becoming a significant player in the mental health field. With its ability to provide immersive, distraction-free environments and access to therapies that were not previously available, VR is revolutionising the way mental health care is delivered. At its core, VR creates a 3D environment that can be experienced through a specially designed headset. This simulated world is created to replicate the real world, giving the user a feeling of presence and immersion in the environment. The technology is being used in various fields, including gaming, education, and training, but its application to mental health care is relatively new and compelling. Therapies include virtual Reality to treat mental health issues, from mild to severe. For example, VR has been used to successfully treat phobias, such as fear of heights and other kinds of social phobias. VR therapy is a type of psychotherapy that utilises virtual reality technology to treat mental health issues.

The importance of machine learning and AI technology in healthcare

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With artificial intelligence (AI) continuing to dominate conversations among healthcare’s strategic thinkers, it’s clear that recent innovations in this field could herald a step-change in healthcare delivery. AI’s ability to mimic human intelligence and machine learning (ML)’s capacity to learn from vast amounts of data means these technologies are fast becoming indispensable tools for healthcare leaders who want to optimize operations. Understanding how they work – and where to apply them for maximum impact – will be crucial to stay ahead of the competition as the revenue cycle landscape evolves. This article breaks down the what, why and how of AI technology in healthcare, and includes a look at Experian Health’s new AI-based claims denial solution, AI Advantage. View More  AI in healthcare

What Types of Testing Does Life Science Technology Demand?

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  Life science technology requires the following types of testing to ensure it safeguards data and benefits end users: Performance testing:  Understand how your platform performs under typical conditions and discover the stability and responsiveness of systems under standard workloads.  Load testing:  Understand how much traffic your platform can handle in high-traffic periods.  Stress testing:  See how your platform performs under extreme loads.

What Does Technology Mean for Life Science Companies Today?

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  Technology solutions are becoming increasingly important for the life science sector: Digitization can help life science companies achieve better patient outcomes and improve healthcare services such as personalized medicine. Companies can access data to improve product performance. Scientists can learn more about pharmaceuticals, medical devices, biotechnology-based food and medicines, and other life science products with life sciences software. Scientists can solve problems and make better decisions with technologies such as life sciences software, automation, artificial intelligence, machine learning, the cloud, and the Internet of Things (IoT). Life sciences software with advanced data analytics allows scientists to identify patterns and trends in data sets for more insight into processes and workflows. Digital ecosystems can help fill the life science innovation gap and enhance pipeline development. Life sciences software development  can help companies create custom software to