<td id="kg486"><optgroup id="kg486"></optgroup></td>
<button id="kg486"><tbody id="kg486"></tbody></button>
<li id="kg486"><dl id="kg486"></dl></li>
  • <dl id="kg486"></dl>
  • <code id="kg486"><tr id="kg486"></tr></code>
  • Google Researchers Develop an AR Microscope for Cancer Detection

    Apr 19, 2018

    Google Researchers Develop an AR Microscope for Cancer Detection

    A team of Google researchers has developed a Machine Learning (ML) and Augmented Reality (AR)-powered microscope that can help in real-time detection of cancer and save millions of lives.

    In the annual meeting of the American Association for Cancer Research (AACR) in Chicago, Illinois on Monday, Google described a prototype Augmented Reality Microscope (ARM) platform that can help accelerate and democratise the adoption of deep learning tools for pathologists around the world.

    The platform consists of a modified light microscope that enables real-time image analysis and presentation of the results of ML algorithms directly into the field of view.

    The ARM can be retrofitted into existing light microscopes around the world, using low-cost, readily-available components, and without the need for whole slide digital versions of the tissue being analysed.


    "In principle, the ARM can provide a wide variety of visual feedback, including text, arrows, contours, heatmaps or animations, and is capable of running many types of machine learning algorithms aimed at solving different problems such as object detection, quantification or classification," Martin Stumpe, Technical Lead and Craig Mermel, Product Manager, Google Brain Team, wrote in a blog post.

    Applications of deep learning to medical disciplines including ophthalmology, dermatology, radiology, and pathology have shown great promise.

    "At Google, we have also published results showing that a convolutional neural network is able to detect breast cancer metastases in lymph nodes at a level of accuracy comparable to a trained pathologist," the post said.

    However, because direct tissue visualisation using a compound light microscope remains the predominant means by which a pathologist diagnoses illness, a critical barrier to the widespread adoption of deep learning in pathology is the dependence on having a digital representation of the microscopic tissue.

    Modern computational components and deep learning models, such as those built upon open source software "TensorFlow", will allow a wide range of pre-trained models to run on this platform.

    The Google team configured ARM to run two different cancer detection algorithms - one that detects breast cancer metastases in lymph node specimens and another that detects prostate cancer in prostatectomy specimens.

    While both cancer models were originally trained on images from a whole slide scanner with a significantly different optical configuration, the models performed remarkably well on the ARM with no additional re-training, the Google Brain Team noted.

    "We believe that the ARM has potential for a large impact on global health, particularly for the diagnosis of infectious diseases, including tuberculosis and malaria, in the developing countries," Google noted.

     

    Source: Gadgets360


    Copyright ? 2017, G.T. Internet Information Co.,Ltd. All Rights Reserved.
    主站蜘蛛池模板: 天堂/在线中文在线资源官网| 美女视频免费看一区二区| 欧美成人鲁丝片在线观看| 国内xxxx乱子另类| 亚洲精品动漫免费二区| WWW国产成人免费观看视频| 男人咬奶边做好爽免费视频| 女人16一毛片| 亚洲综合免费视频| 99re最新地址精品视频| 欧美视频免费在线观看| 国产精品美女久久久久AV福利| 亚洲日本人成中文字幕| 老司机在线精品| 最近2019中文字幕大全第二页| 国产成社区在线视频观看| 久久精品国产一区二区三区不卡 | 国产精品久久精品视| 亚洲伊人久久精品影院| 黑巨人与欧美精品一区| 日本高清va在线播放| 国产91在线九色| 一根巨茎走天下小说| 理论片yy4408在线观看| 国产美女爽到喷出水来视频| 亚洲乱妇老熟女爽到高潮的片| 激情网站免费看| 日日碰狠狠添天天爽不卡| 午夜高清啪啪免费观看完整| heisiav1| 欧美性大战久久久久xxx| 国产新疆成人a一片在线观看| 久久人人爽人人爽人人片av不| 老司机精品视频在线| 天天摸天天爽天天碰天天弄| 亚洲欧美4444kkkk| 国产高跟踩踏vk| 成人网站在线进入爽爽爽| 任你躁欧美一级在线精品| 222www免费视频| 日韩av片无码一区二区不卡电影|