人工智能和深度学习重建在泌尿外科计算机断层扫描中的应用:幽灵水平的剂量减少

IF 0.7 Q4 UROLOGY & NEPHROLOGY
Urology Annals Pub Date : 2023-01-01 DOI:10.4103/ua.ua_73_23
Abdul Rauf, Saqib Javed, Bhargavi Chandrasekar, Saiful Miah, Margaret Lyttle, Mamoon Siraj, Rono Mukherjee, Christopher M. McLeavy, Hazem Alaaraj, Richard Hawkins
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引用次数: 0

摘要

摘要目的:本研究的目的是证明在计算机断层扫描(CT)中使用人工智能(AI),可以将CT肾-输尿管-膀胱(KUB)和CT尿路图(CTU)的辐射剂量分别降低到低于x射线KUB和CT KUB的辐射剂量,同时保持良好的图像质量。材料和方法:我们回顾了2019年9月在我院进行的所有CT kub (n = 121)和2019年12月进行的所有CT tu (n = 74)。记录所有CT kub的剂量长度积(DLP)和CTU的各个阶段。将使用人工智能和深度学习重建(DLR)的新扫描仪(佳能Aquilion One Genesis with AiCE [CAOG])与传统的非人工智能扫描仪(GE OPTIMA 660 [GEO-660])进行的每次扫描的DLP进行比较。我们还将两种扫描仪的dlp与英国CT国家诊断参考水平(NDRL)进行了比较。结果:回顾了121例患者的CT kub和74例患者的CT图。对于CT KUB组,使用AI/DLR扫描仪(CAOG)完成81/121次扫描的平均DLP为77.8 mGy cm (1.16 mSv),而使用GEO-660完成40/121次CT KUB的平均DLP为317.1 mGy cm (4.75 mSv)。对于CTU组,使用AI/DLR扫描仪(CAOG)进行的46/74次扫描的平均DLP为401.9 mGy cm (6 mSv),而GEO-660的平均DLP为1352.6 mGy cm (20.2 mSv)。结论:我们认为采用AI/DLR方法的CT扫描仪具有降低CT KUB和CTU辐射剂量的潜力,其程度预示着XR平片KUB在尿路结石随访中的应用将会消失。据我们所知,这是第一次比较使用AI/DLR技术的新型扫描仪与使用混合迭代重建技术的传统扫描仪的CT KUB和CTU剂量的研究。此外,我们已经证明,该技术可以显著减少所有接受CT检查的泌尿科患者的累积辐射负担,无论是CT KUB还是CTU。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of artificial intelligence and deep learning reconstruction in urological computed tomography: Dose reduction at ghost level
Abstract Objective: The objective of the study is to demonstrate that with the use of artificial intelligence (AI) in computed tomography (CT), radiation doses of CT kidney-ureter-bladder (KUB) and CT urogram (CTU) can be reduced to less than that of X-ray KUB and CT KUB, respectively, while maintaining the good image quality. Materials and Methods: We reviewed all CT KUBs ( n = 121) performed in September 2019 and all CTUs ( n = 74) performed in December 2019 at our institution. The dose length product (DLP) of all CT KUBs and each individual phase of CTU were recorded. DLP of each scan done with new scanner (Canon Aquilion One Genesis with AiCE [CAOG]) which uses AI and deep learning reconstruction (DLR) were compared against traditional non-AI scanner (GE OPTIMA 660 [GEO-660]). We also compared DLPs of both scanners against the United Kingdom, National Diagnostic Reference Levels (NDRL) for CT. Results: One hundred and twenty-one patient’s CT KUBs and 74 patient’s CTUs were reviewed. For CT KUB group, the mean DLP of 81/121 scans done using AI/DLR scanner (CAOG) was 77.8 mGy cm (1.16 mSv), while the mean DLP of 40/121 CT KUB done with GEO-660 was 317.1 mGy cm (4.75 mSv). For CTU group, the mean DLP for 46/74 scans done using AI/DLR scanner (CAOG) was 401.9 mGy cm (6 mSv), compared to mean DLP of 1352.6 mGy cm (20.2 mSv) from GEO-660. Conclusion: We propose that CT scanners using AI/DLR method have the potential of reducing radiation doses of CT KUB and CTU to such an extent that it heralds the extinction of plain film XR KUB for follow-up of urinary tract stones. To the best of our knowledge, this is the first study comparing CT KUB and CTU doses from new scanners utilizing AI/DLR technology with traditional scanners using hybrid iterative reconstruction technology. Moreover, we have shown that this technology can markedly reduce the cumulative radiation burden in all urological patients undergoing CT examinations, whether this is CT KUB or CTU.
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来源期刊
Urology Annals
Urology Annals UROLOGY & NEPHROLOGY-
CiteScore
1.20
自引率
0.00%
发文量
59
审稿时长
31 weeks
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