Skip to content
This repository has been archived by the owner on Jul 8, 2022. It is now read-only.

Latest commit

 

History

History
50 lines (50 loc) · 5.87 KB

ai-for-healthcare.md

File metadata and controls

50 lines (50 loc) · 5.87 KB
title description draft type layout metadescription image sections
AI for healthcare | Fuzzy Labs
false
page
landing
AI is powering huge advances in healthcare. Smarter medical imaging, improving disease detection and diagnosis. Searching and connecting billions of data points and research papers, speeding up drug discovery. And all while ensuring patient privacy and compliance in the age of information. AI in healthcare is here to stay – it’s time to get on board.
/images/medical-scope.jpg
type backgroundicon heading description
intro
topright
AI for healthcare
<p>AI is powering huge advances in healthcare. Smarter medical imaging, improving disease detection and diagnosis. Searching and connecting billions of data points and research papers, speeding up drug discovery. And all while ensuring patient privacy and compliance in the age of information. AI in healthcare is here to stay – it’s time to get on board.</p>
type image overlay
image
/images/medical-scope.jpg
top
type heading subheading copy background backgroundalign
textblock
Let's do this:
<p>Our custom AI solutions use big data techniques to help biotech firms build the future of healthcare.</p>
<h3>AI in medical technology – the opportunities</h3><p>Wearable medical technology is already changing people’s lives for the better. What’s really exciting is just how much more is possible for biotech firms who embrace data science and AI at every level, to build truly data-driven patient outcomes.</p><p> AI can be applied to life sciences in so many ways. You can speed up manual patient record processing, using automated OCR (optical character recognition) data extraction. Or connect these patient data points from disparate sources using data warehousing. Next? Make new inferences, and build a richer diagnostic picture. Then, use applied AI techniques to analyse, cross reference, and scour medical journals to diagnose and predict patient outcomes.</p><p> Machine learning is not just helping process medical text records either – algorithms can be trained to recognise, understand, and classify medical imagery like X-rays, MRI scans and even photographs of symptoms. Using AI image recognition can augment and improve decision making for clinicians, meaning faster and more accurate diagnoses.</p><p> The possibilities for AI in biotech are huge.
We can make what’s possible, reality.</p>
/images/bg-arrows-2.png
right
type columns heading cards
cards
2
AI for healthcare can help:
image heading description
/images/AdobeStock_175508874.jpeg
Develop wearable medical technology
<a href='/blog/ai-for-your-feet'>IOT projects using sensors</a> and wearable technology improve people’s lives, and ultimately, promote better health. No matter how big or small your dataset or ambition, we can help you develop the right AI solution. Using personal health data is key to empowering patients. Deploying AI to analyse and interpret IOT data is the next logical step. We’ll help you see the bigger picture, and do so much more with your data.
image heading description
/images/AdobeStock_143640001.jpeg
Improve patient outcomes with medical image recognition
We’ve built and trained complex algorithms to analyse medical imaging. AI is able to compare medical images across millions of connected data points infinitely faster than a human. It can identify disease markers in seconds. Or suggest a likely diagnosis. AI applications can also cross reference similar past cases, to identify the best course of treatment and likely outcome.
image heading description
/images/AdobeStock_182978448.jpeg
Privacy and compliance in medical research
We can help further biotech research projects by applying AI, to create differential privacy models for your data. Anonymising data is crucial in healthcare research, and our custom built AI solutions ensure that your patient data is not at risk. Applying machine learning techniques can also reduce the risk of introducing bias in medical research modelling, for more accurate outcomes.
image heading description
/images/AdobeStock_330625975.jpeg
Speed up medical research and development
AI completely transforms the speed of progress in life science research. We can deploy natural language processing tools to quickly parse data from a vast array of sources, like medical journals, research papers, and lab reports. So whether you’re discovering new drugs, or running clinical trials for existing treatments, AI allows you to connect the dots faster and get ahead of the game.
type imagealign image heading description buttonText buttonLink
imagecopy
left
/images/AdobeStock_207219896.jpeg
Our approach
<p><b>With a custom approach, we’re able to handle everything from the smallest to the most complex problems in medical technology. AI is our bread and butter, and we’re adept at understanding where existing technology can be applied in new ways to make giant leaps forward for biotech firms.</b></p><p>At Fuzzy Labs, we work collaboratively with our clients to fully understand the issues and opportunities, always scaling our solutions to be cost effective. So whether you need a smarter way of linking MRI scans to patient records, or a robust solution for anonymising your patient data in clinical trials, we can help.
Read more about our AI Blueprint
/ai-blueprint
type heading description whitecopy
footer
AI for your biotech business
<p>We’re doing exciting things in AI with healthcare firms. If you have big ideas about what could be possible, let’s talk about getting our AI expertise working for your business and make it reality, sooner.</p>
Have a question about how AI could work for you? <br>Give us a shout using the form below.