AI algorithm used to reduce drug toxicity for brain cancer therapy

    Source: Xinhua| 2018-08-12 01:31:32|Editor: Mu Xuequan
    Video PlayerClose

    WASHINGTON, Aug. 11 (Xinhua ) -- American researchers are employing novel machine-learning techniques to improve the quality of life for patients by reducing toxic chemotherapy and radiotherapy dosing for glioblastoma, the most aggressive form of brain cancer.

    In a paper to be presented next week at the 2018 Machine Learning for Healthcare conference at Stanford University, the Massachusetts Institute of Technology (MIT) Media Lab researchers reported a model that could dose regimens less toxic but still effective.

    Patients of glioblastoma must endure a combination of radiation therapy and multiple drugs taken every month, but these strong pharmaceuticals tend to cause debilitating side effects in patients.

    Powered by a "self-learning" machine-learning technique, the model looks at treatment regimens currently in use, and iteratively adjusts the doses, according to MIT's recent news release.

    Eventually, it finds an optimal treatment plan, with the lowest possible potency and frequency of doses that should still reduce tumor sizes to a degree comparable to that of traditional regimens.

    In simulated trials of 50 patients, the machine-learning model designed treatment cycles that reduced the potency to a quarter or half of nearly all the doses while maintaining the same tumor-shrinking potential.

    Many times, it skipped doses altogether, scheduling administrations only twice a year instead of monthly.

    The researchers' model used a technique called reinforced learning (RL), a method inspired by behavioral psychology, in which a model learns to favor certain behavior that leads to a desired outcome.

    The technique comprises artificially intelligent "agents" that complete "actions" in an unpredictable, complex environment to reach a desired "outcome."

    Whenever it completes an action, the agent receives a "reward" or "penalty," depending on whether the action works toward the outcome. Then, the agent adjusts its actions accordingly to achieve that outcome.

    "We kept the goal, where we have to help patients by reducing tumor sizes but, at the same time, we want to make sure the quality of life, the dosing toxicity, doesn't lead to overwhelming sickness and harmful side effects," said Pratik Shah, a principal investigator at the Media Lab who supervised this research.

    TOP STORIES
    EDITOR’S CHOICE
    MOST VIEWED
    EXPLORE XINHUANET
    010020070750000000000000011105091373838911
    主站蜘蛛池模板: 特级全黄一级毛片视频| 久草视频在线网| 无码高潮少妇毛多水多水免费| 亚洲日韩国产欧美一区二区三区| 美国一级毛片在线观看| 国产欧美日韩亚洲一区二区三区| a国产成人免费视频| 无敌影视手机在线观看高清| 亚洲乱码一二三四区国产| 男女一边摸一边做爽视频| 国产伦精品一区二区三区免费迷| 91久国产在线观看| 巨大黑人极品videos精品| 久久精品*5在热| 欧美成人三级一区二区在线观看| 好男人官网在线播放| 久久综合色婷婷| 欧美色图另类图片| 北条麻妃74部作品在线观看| 香蕉高清免费永久在线视频| 国产精品美女久久久久av超清 | 国产成人无码AV一区二区| 91精品国产免费久久国语蜜臀| 嫩的都出水了18p| 久久97久久97精品免视看秋霞| 最近中文字幕高清2019中文字幕 | 亚洲色偷偷色噜噜狠狠99| 美女主动张腿让男人桶| 国产午夜无码视频免费网站| 波多野结衣导航| 国产麻豆成人传媒免费观看| www.毛片在线观看| 成人精品一区二区不卡视频| 久久最新免费视频| 樱桃视频高清免费观看在线播放| 亚洲欧美日韩精品专区| 男人j放进女人p动态图视频| 午夜a成v人电影| 老子影院我不卡在线理论| 国产免费卡一卡三卡乱码| 久久五月激情婷婷日韩|