Google is using its deep learning tech to diagnose disease

If you give a computer enough photos and the right algorithm, it can learn to see. And if the photos show damaged eyes, the computer can learn to diagnose eye disease even better than humans can.

People with diabetes frequently suffer from a condition called diabetic retinopathy, where the tiny blood vessels at the back of their eyes (the retina) become damaged and start to leak. About one in three diabetics have this kind of damage, and if left untreated it can cause permanent blindness. With early detection, though, it’s quite treatable.

The problem is that many people don’t have access to an ophthalmologist who can diagnose them. There are 387 million diabetics worldwide who need to see specialists in order to catch the disease early, and our current prevention isn’t working well enough — diabetic retinopathy is the leading cause of vision impairment and blindness in the working-age population.

So Google devised a way to use deep machine learning to teach a neural network how to detect diabetic retinopathy from photos of patients’ eyes. They published their work in the Journal of the American Medical Association on Tuesday.

A neural network is kind of like an artificial brain, albeit a simple one. By showing it a huge set of images of patients with and without retina damage, engineers can train the network to distinguish between diseased and non-diseased eyes. After the training, the Google team tested the neural network to see if the algorithm could detect diabetic retinopathy as well as ophthalmologists, who had seen the same images.

Google’s algorithm performed slightly better than the human ophthalmologists, which suggests that the neural network could help screen patients in the future, or at least assist doctors in the diagnosis process.

Doctors already use a similar kind of technology to help diagnose diseases like heart disease and some kinds of cancer. The current technology isn’t as advanced as Google’s new deep learning algorithm, but it’s based on the same principle. Doctors identify issues like artery blockage in heart disease and abnormal growths in cancer by looking at images of your body, whether from an x-ray or a CT scan. A specialist in these kind of images—a radiologist—has years of experience of looking at photos and picking out problematic areas.

But human vision is only so good, and people are prone to making mistakes. If a computer could do the same thing, it would probably be able to surpass a human’s ability to find cancerous growths or blocked arteries. The logical solution is to teach a computer what an irregular image looks like versus a regular image. That might seem simple—understanding an image is easy enough for people, after all.

The trouble is that understanding images is more difficult for computers than it is for a human brain. If you show the picture above to a computer, all it really sees is a series of pixels with certain colors assigned to them. You, on the other hand, see a beach and a woman. You can identify her sunglasses and hat. You know that she’s jumping and wearing a green bikini with little white flowers, and that it’s overcast. A computer doesn’t know any of that, unless it has computer vision.

Computer vision is a way of teaching computers how to “see," to look at that image and know that a person is lying down on a beach wearing purple swim trunks. The way that computers currently help diagnose patients is a basic form of computer vision, but it can only assist with the process—it isn’t good enough to replace a set of human eyes.

Google has the potential to change that. They’re already great at computer vision, in part because they have an immense amount of data. You can see for yourself how well it already works, because Google uses their computer vision technology to organizing your personal pictures. If you go to Google Photos right now (assuming that you have a Google account, which you probably do), you can see all the photos that the system has catalogued and search by term. Try “pictures of snow” or, better yet, “pictures of dogs.” Pictures of snow and dogs will show up, not because anyone tagged those photos with text, but because Google’s computer vision algorithm has identified snow and dogs in those images.

Diabetic retinopathy is one of the first diagnostic applications that Google has found for it’s deep learning computer vision team. Other teams are already working on similar projects. Cornell University has a Vision and Image Analysis Group that’s working on using computer vision to diagnose lung diseases, heart problems, and bone health issues. A Finnish group is working on how to diagnose malaria from images of blood, and IBM has spent years developing an algorithm to detect skin cancer.

One day, computer vision and deep learning could change the way doctors diagnose patients. But for now the FDA hasn’t signed off on using this kind of technology in medicine. If this is the way of the future, they’ll have to figure out how to regulate neural networks safely. In the meantime, you can use Google’s computer vision capabilities to find pictures of your dog and turn them into nightmares. Not as useful, perhaps, but a decent way to pass the time.

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Electrolux is testing Uber-like laundry machine sharing

You can already get rides from strangers and rent their rooms, but what if you could use their washers and dryers? Electrolux thinks it’s worth a shot. CEO Jonas Samuelson tells the Financial Times that the appliance giant is testing a "laundry Uber" where you could pay to clean your clothes at someone else’s home. This would require an abundance of connected machines to be viable, but it would help you recoup some of the cost of expensive equipment that stays idle most of the week.

The company isn’t blind to the potential legal and technical hurdles with a service like this. Who covers the costs if the machines shrink your new sweater? What about security or long-term technical compatibility? We’d add other concerns as well. Does the homeowner have to accommodate you while you’re waiting for your clothes, for example? And how do you make sure that people don’t buy properties just to turn them into makeshift laundromats, much as some have converted apartments and houses into illegal Airbnb hotels?

Samuelson doesn’t say how well the tests are going, or provide a timetable for when you could see Electrolux offer a public-facing service. However, it wouldn’t be surprising if the company goes forward once it addresses key issues. Electrolux and other appliance makers aren’t exactly seeing a surge of demand, and a sharing option might spark interest. After all, you might be more likely to buy a pricey washer/dryer combo if you know that it won’t cost you that much in the long run.

Source: Financial Times (login required)

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Facebook Messenger Just Became a Complete Mobile Gaming Platform

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In an attempt to overload its messaging service with even more features, Facebook has turned Messenger into a complete cross-platform gaming service. Launching for both Android and iOS, users can begin playing games with friends, and we aren’t talking Tic-Tac-Toe or Hangman. 

Games available for playing with friends include Words With Friends, Pac-Man, Galaga, EverWing, Arkanoid, and plenty more. These are classic titles, ready for 2-player gaming action.

To start up a game, simply open up a message with the person you want to play with, then tap on the “gaming controller” icon. From here, click on the title you want, then get to playing. In addition, users can find games on their Newsfeed, with single player options also available.

Go get your gaming on.

Play Link

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Via: Facebook

Facebook Messenger Just Became a Complete Mobile Gaming Platform is a post from: Droid Life

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Gigabyte Brix Gaming UHD Mini-PC Review – GB-BNi7HG4-950

Gigabyte Brix Gaming UHD Mini-PC Review Gigabyte launched the BRIX series back in 2013 to cover the growing ultra compact and versatile DIY PC kit market. Gigabyte has offered a broad choice of processors covering a range of performance points and a couple of those systems have been aimed at gamers of the years. Gamers …more

The post Gigabyte Brix Gaming UHD Mini-PC Review – GB-BNi7HG4-950 appeared first on Legit Reviews.

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Android’s improved SD card support leads to new “app performance” ratings

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Android phones with SD card slots are the primary driver behind the new “app performance” rating for SD cards.

Andrew Cunningham

SD cards have historically been associated with digital cameras, media players, game consoles, and other relatively simple and appliance-like devices. In these roles, the cards primarily needed to offer fast sequential read and write speeds, since they were typically just being asked to save and access one file at a time. But SD cards are becoming increasingly important as primary storage devices, use cases that demand better random read and write performance to account for multiple apps making small reads and writes to the cards in rapid succession.

The new application performance symbols.
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The new application performance symbols.

In recognition of these more complex use cases, the SD Association has introduced version 5.1 of the SD Specification (PDF), which adds a new “App Performance” class that guarantees buyers a minimum number of input/output operations per second (IOPS) just as the current speed classes guarantee minimum sequential writing speeds. The new “A1” speed class promises that cards support sustained write speeds of at least 10MBps, at least 1,500 read IOPS, and at least 500 write IOPS. Additional speed classes “will be introduced to meet market needs.”

A white paper published by the SD Association primarily credits Android 6.0’s “adoptable storage” feature as the reason for the new standard—when Android OEMs don’t turn it off, the feature makes it trivial for users to add to their phones’ internal storage. But SD cards are considerably slower than the internal storage in most of these phones. To counteract this, Android generates warning pop-ups when cards don’t meet minimum performance thresholds, but without doing extra research it’s difficult for buyers to know whether the cards they’re buying will be fast enough to avoid these messages.

The new standard should also be useful for boards like the Raspberry Pi, which include no built-in flash memory or standard SATA or m.2 drive connectors and use SD cards as their primary storage.

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Get ready for 24-30% reduction in cost of wind power by 2030

A paper published in Nature Energy analyzed the opinions of 163 wind power experts from around the globe, and found that they expect the cost of wind energy to fall even further. Those experts said that by 2030, both onshore and offshore wind turbines will get bigger, leading to additional cost reductions and smoother energy generation.

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Social Media Comes To Autistic Boy’s Rescue

bencup

An effort by thousands of social media users to help an autistic boy has paid off.

14-year-old Ben Carter is described by his father Marc as having “severe autism, he’s non-verbal and has very limited understanding.” Since he was two, Ben has drunk exclusively from a two-handed toddler cup and refused any other vessel, to the point that he was twice hospitalised with dehydration. To make things worse, Ben’s medication is administered via drinks of orange juice.

Although the family replaced the cup once with an identical model, the replacement also began disintegrating – a major problem given the model was long out of production. Marc tweeted his followers to ask if they could track a replacement cup down and the post wound up being retweeted more than 20,000 times.

Manufacturers Tommee Tippee said they no longer had any stock, but also posted requests on Twitter and Facebook. The appeals promoted numerous responses, including people posting spare cups of a similar model (which Ben rejected, instantly spotting it was an “imposter”) and suggestions of 3D printing.

However, not only did the family receive several dozen old cups of the same model but the interest prompted the manufacturers to search factories across the world. Eventually they tracked down an original production mold in China which had not been disposed of as should normally have happened. After confirming it still works and is in a food-safe condition, they have told the family they will produce a lifetime supply of cups for Ben.

It’s still not certain if Ben will accept the replacement, having rejected some of the donated cups that were in relatively good condition. The family now plans to collate the full set of donations, sort them in order of deterioration, start with the one in worst shape, and gradually replace them with ones in better condition in the hope that the adjustment will be subtle enough each time that Ben accepts the change. If that works, the hope is that eventually Ben will come to accept a new cup as “his” meaning the family will never have to worry about running out of cups.

The post Social Media Comes To Autistic Boy’s Rescue appeared first on Geeks are Sexy Technology News.

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