"/>

蜜臀av性久久久久|国产免费久久精品99|国产99久久久久久免费|成人精品一区二区三区在线|日韩精品一区二区av在线|国产亚洲欧美在线观看四区|色噜噜综合亚洲av中文无码|99久久久国产精品免费播放器

<cite id="ygcks"><center id="ygcks"></center></cite>
  • 
    
  • <rt id="ygcks"></rt>
    <cite id="ygcks"></cite>
  • <li id="ygcks"><source id="ygcks"></source></li> <button id="ygcks"></button>
  • <button id="ygcks"></button>
    <button id="ygcks"><input id="ygcks"></input></button>
    
    
    <abbr id="ygcks"><source id="ygcks"></source></abbr>
    
    

    Scientists teach computers to recognize cells, using AI

    Source: Xinhua    2018-04-13 00:14:10

    WASHINGTON, April 12 (Xinhua) -- Biologists and computer scientists are using artificial intelligence (AI) to tell apart cells that haven't been stained and find a wealth of data that scientists can't detect on their own.

    A study published on Thursday in the journal Cell has shown how deep learning, a type of machine learning involving algorithms that can analyze data, recognize patterns, and make predictions, is used to pick out features in neurons and other cells.

    It's usually quite hard to look at a microscope image of an untreated cell and identify its features. To make cell characteristics visible to the human eye, scientists normally have to use chemicals that can kill the very cells they want to look at.

    The study has shown that computers can see details in images without using these invasive techniques, as images contain much more information than was ever thought possible.

    Steven Finkbeiner, a director and senior investigator at the Gladstone Institutes, teamed up with computer scientists at Google who customized for him a model with TensorFlow, a popular open-source library for deep learning originally developed by Google AI engineers.

    They invented a new deep learning approach called "in silico labeling," in which a computer can find and predict features in images of unlabeled cells. This new method uncovers important information that would otherwise be problematic or impossible for scientists to obtain.

    "This is going to be transformative," said Finkbeiner. "Deep learning is going to fundamentally change the way we conduct biomedical science in the future, not only by accelerating discovery, but also by helping find treatments to address major unmet medical needs."

    The deep network can identify whether a cell is alive or dead, and get the answer right 98 percent of the time, according to the researchers.

    It was even able to pick out a single dead cell in a mass of live cells. In comparison, people can typically only identify a dead cell with 80 percent accuracy.

    Finkbeiner's team realized that once trained, the network can increase the ability and speed with which it learns to perform new tasks. They trained it to accurately predict the location of the cell's nucleus, or command center.

    The model can also distinguish between different cell types. For instance, the network can identify a neuron within a mix of cells in a dish. It can go one step further and predict whether an extension of that neuron is an axon or dendrite, two different but similar-looking elements of the cell.

    They trained the neural network by showing it two sets of matching images of the same cells; one unlabeled and one with fluorescent labels. This process has been repeated millions of times. Then, when they presented the network with an unlabeled image it had never seen, it could accurately predict where the fluorescent labels belong.

    "The more the model has learned, the less data it needs to learn a new similar task," said Philip Nelson, director of engineering at Google Accelerated Science.

    "This kind of transfer learning, where a network applies what it's learned on some types of images to entirely new types, has been a long-standing challenge in AI, and we're excited to have gotten it working so well here," said Nelson.

    "This approach has the potential to revolutionize biomedical research," said Margaret Sutherland, program director at the National Institute of Neurological Disorders and Stroke, which partly funded the study.

    Editor: yan
    Related News
    Xinhuanet

    Scientists teach computers to recognize cells, using AI

    Source: Xinhua 2018-04-13 00:14:10

    WASHINGTON, April 12 (Xinhua) -- Biologists and computer scientists are using artificial intelligence (AI) to tell apart cells that haven't been stained and find a wealth of data that scientists can't detect on their own.

    A study published on Thursday in the journal Cell has shown how deep learning, a type of machine learning involving algorithms that can analyze data, recognize patterns, and make predictions, is used to pick out features in neurons and other cells.

    It's usually quite hard to look at a microscope image of an untreated cell and identify its features. To make cell characteristics visible to the human eye, scientists normally have to use chemicals that can kill the very cells they want to look at.

    The study has shown that computers can see details in images without using these invasive techniques, as images contain much more information than was ever thought possible.

    Steven Finkbeiner, a director and senior investigator at the Gladstone Institutes, teamed up with computer scientists at Google who customized for him a model with TensorFlow, a popular open-source library for deep learning originally developed by Google AI engineers.

    They invented a new deep learning approach called "in silico labeling," in which a computer can find and predict features in images of unlabeled cells. This new method uncovers important information that would otherwise be problematic or impossible for scientists to obtain.

    "This is going to be transformative," said Finkbeiner. "Deep learning is going to fundamentally change the way we conduct biomedical science in the future, not only by accelerating discovery, but also by helping find treatments to address major unmet medical needs."

    The deep network can identify whether a cell is alive or dead, and get the answer right 98 percent of the time, according to the researchers.

    It was even able to pick out a single dead cell in a mass of live cells. In comparison, people can typically only identify a dead cell with 80 percent accuracy.

    Finkbeiner's team realized that once trained, the network can increase the ability and speed with which it learns to perform new tasks. They trained it to accurately predict the location of the cell's nucleus, or command center.

    The model can also distinguish between different cell types. For instance, the network can identify a neuron within a mix of cells in a dish. It can go one step further and predict whether an extension of that neuron is an axon or dendrite, two different but similar-looking elements of the cell.

    They trained the neural network by showing it two sets of matching images of the same cells; one unlabeled and one with fluorescent labels. This process has been repeated millions of times. Then, when they presented the network with an unlabeled image it had never seen, it could accurately predict where the fluorescent labels belong.

    "The more the model has learned, the less data it needs to learn a new similar task," said Philip Nelson, director of engineering at Google Accelerated Science.

    "This kind of transfer learning, where a network applies what it's learned on some types of images to entirely new types, has been a long-standing challenge in AI, and we're excited to have gotten it working so well here," said Nelson.

    "This approach has the potential to revolutionize biomedical research," said Margaret Sutherland, program director at the National Institute of Neurological Disorders and Stroke, which partly funded the study.

    [Editor: huaxia]
    010020070750000000000000011105521371069391
    陕西省| 林西县| 清流县| 子洲县| 大名县| 武宁县| 奉化市| 云龙县| 大新县| 晋中市| 黄山市| 新田县| 图木舒克市| 屯昌县| 枣强县| 双流县| 泸州市| 阿克陶县| 青田县| 锡林郭勒盟| 深泽县| 贵港市| 霸州市| 冀州市| 天长市| 余姚市| 林州市| 东兴市| 巩义市| 鹤山市| 太保市| 安丘市| 洪雅县| 出国| 龙川县| 象山县| 辽宁省| 卫辉市| 家居| 苗栗市| 霍城县|