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[1]魏立豪,張飛鵬,詹淑君,等.多序列MR影像組學(xué)模型對(duì)FNH及HCC的診斷價(jià)值[J].福建醫(yī)藥雜志,2024,46(04):26-30.[doi:10.20148/j.fmj.2024.04.007]
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多序列MR影像組學(xué)模型對(duì)FNH及HCC的診斷價(jià)值()
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《福建醫(yī)藥雜志》[ISSN:1002-2600/CN:35-1071/R]

卷:
46
期數(shù):
2024年04期
頁(yè)碼:
26-30
欄目:
臨床研究
出版日期:
2024-08-15

文章信息/Info

文章編號(hào):
1002-2600(2024)04-0026-05
作者:
魏立豪1張飛鵬1詹淑君1林景戀1肖慧君1張梅2
1 福建醫(yī)科大學(xué)附屬漳州市醫(yī)院醫(yī)學(xué)影像科,漳州 350600; 2 成都開(kāi)放大學(xué),成都 610213
關(guān)鍵詞:
肝細(xì)胞癌 局灶性結(jié)節(jié)性增生 影像組學(xué) 磁共振成像
分類號(hào):
R735.7; R445.2
DOI:
10.20148/j.fmj.2024.04.007
文獻(xiàn)標(biāo)志碼:
B
摘要:
目的 本研究旨在探討彌散加權(quán)成像(DWI)及C序列聯(lián)合構(gòu)建的影像組學(xué)模型對(duì)局灶性結(jié)節(jié)增生(FNH)及肝細(xì)胞癌(HCC)的鑒別診斷價(jià)值。方法 通過(guò)回顧性分析2011年至2021年間在福建醫(yī)科大學(xué)附屬漳州市醫(yī)院確診的196名患者的MRI圖像,采用DWI及C序列的圖像,各自提取了多種影像組學(xué)特征,將提取出的特征進(jìn)行聯(lián)合降維、篩選,使用LR分類器,構(gòu)建HCC和FNH的影像組學(xué)鑒別模型。結(jié)果 該影像組學(xué)模型在診斷HCC和FNH方面表現(xiàn)出良好的診斷效能,其中曲線下面積(AUC)值為0.900,準(zhǔn)確度0.833,敏感度0.800,特異性0.867。結(jié)論 DWI及C序列聯(lián)合構(gòu)建的影像組學(xué)模型在FNH與HCC的鑒別診斷中展現(xiàn)出顯著價(jià)值,能夠有效地區(qū)分FNH和HCC,有助于提高診斷準(zhǔn)確性、優(yōu)化治療方案選擇及改善患者預(yù)后具有重要意義。

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備注/Memo

備注/Memo:
基金項(xiàng)目:福建省衛(wèi)生健康青年科研課題(2020QNA076)
通信作者:張飛鵬,Email:[email protected]
更新日期/Last Update: 2024-08-15