• <tr id="yyy80"></tr>
  • <sup id="yyy80"></sup>
  • <tfoot id="yyy80"><noscript id="yyy80"></noscript></tfoot>
  • 99热精品在线国产_美女午夜性视频免费_国产精品国产高清国产av_av欧美777_自拍偷自拍亚洲精品老妇_亚洲熟女精品中文字幕_www日本黄色视频网_国产精品野战在线观看 ?

    Artificial intelligence for disease diagnostics still has a long way to go

    2024-05-17 01:36:05JianSheYangQiangWangZhongWeiLv
    World Journal of Radiology 2024年3期

    Jian-She Yang,Qiang Wang,Zhong-Wei Lv

    Abstract Artificial intelligence (AI) can sometimes resolve difficulties that other advanced technologies and humans cannot.In medical diagnostics,AI has the advantage of processing figure recognition,especially for images with similar characteristics that are difficult to distinguish with the naked eye.However,the mechanisms of this advanced technique should be well-addressed to elucidate clinical issues.In this letter,regarding an original study presented by Takayama et al,we suggest that the authors should effectively illustrate the mechanism and detailed procedure that artificial intelligence techniques processing the acquired images,including the recognition of non-obvious difference between the normal parts and pathological ones,which were impossible to be distinguished by naked eyes,such as the basic constitutional elements of pixels and grayscale,special molecules or even some metal ions which involved into the diseases occurrence.

    Key Words: Artificial intelligence;Figure recognition;Diagnosis;AI interactive mechanisms

    TO THE EDlTOR

    Recently,Takayamaet al[1] reported that a branch of artificial intelligence (AI),namely,deep learning (DL),combined with reduced-field-of-view (reduced-FOV) diffusion-weighted imaging,which was identified as field-of-view optimized and constrained undistorted single-shot,has greatly improved image quality without prolonging the scan time for pancreatic cystic lesion diagnostics.

    This is an very interested work related the current hot-topic,while,due to the technical shortages,further investigation need to be done during the near future.In terms of these issues,the authors haven’t outlined and addressed it in this work rationally.Here we presented some of shortcomings.

    In this work,authors have applied the artificial intelligence to distinguish the images for identified diagnosis of pancreatic disease from other related or concurrent diseases,they should also analyze all types of pancreatic images by this technique as systematically as possible.Given the variety of diseases,even the physiological status of pancreatic disease can present diverse physical and chemical characteristics,which are the bases on which AI operates.However,by simply applying the commercial AIR? Recon DL algorithm (GE Healthcare),the authors have not provided readers the essential and enough information which mentioned above,even in the form of a supplementary material.A complete work should describe the phenomenon with its potential mechanism.Though the AI basic procedures and regulations have been well established by scientists,this interactive episode was absent in this study.

    AI can sometimes resolve difficulties that other advanced technologies and humans cannot[2,3].The authors should effectively illustrate the mechanism and detailed procedure that artificial intelligence techniques processing the acquired images,including the recognition of non-obvious difference between the normal parts and pathological ones of pancreatic,which were not sensitive to naked eyes,such as the pixels and grayscale,special molecules or even some metal ions which involved into the diseases occurrence.All of these presentation will facilitate the understanding of AI processing and recognizing similar or confused images.These are the fundamental principles for artificial intelligence applying in medical use.

    FOOTNOTES

    Author contributions:Yang JS,Wang Q,and Lv ZW designed the research,analyzed the data and wrote the paper.

    Supported bythe Dean Responsible Project of Gansu Medical College,No.GY-2023FZZ01;University Teachers Innovation Fund Project of Gansu Province,No.2023A-182;and Key Research Project of Pingliang Science and Technology,No.PL-STK-2021A-004.

    Conflict-of-interest statement:All authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

    Open-Access:This article is an open-access article that was selected by an in-house editor and fully peer-reviewed by external reviewers.It is distributed in accordance with the Creative Commons Attribution NonCommercial (CC BY-NC 4.0) license,which permits others to distribute,remix,adapt,build upon this work non-commercially,and license their derivative works on different terms,provided the original work is properly cited and the use is non-commercial.See: https://creativecommons.org/Licenses/by-nc/4.0/

    Country/Territory of origin:China

    ORClD number:Jian-She Yang 0000-0001-7069-6072;Qiang Wang 0000-0002-9855-6730;Zhong-Wei Lv 0000-0003-3370-5560.

    S-Editor:Liu JH

    L-Editor:A

    P-Editor:Zhao S

    吉首市| 丰台区| 永新县| 江油市| 张家界市| 青阳县| 广宁县| 金川县| 保定市| 靖江市| 沅陵县| 沂南县| 德保县| 永川市| 汶上县| 扶余县| 布拖县| 女性| 蒙山县| 通许县| 隆德县| 海安县| 阿克苏市| 和顺县| 涪陵区| 西盟| 洛阳市| 新昌县| 柳河县| 金塔县| 金乡县| 冕宁县| 鄱阳县| 夏河县| 吕梁市| 武川县| 寻乌县| 施秉县| 顺昌县| 栾川县| 卓尼县|