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定量镓单光子发射计算机断层扫描/计算机断层扫描(Ga-SPECT/CT)对下肢骨髓炎患者的诊断效能

Diagnostic performance of quantitative Ga-SPECT/CT for patients with lower-limb osteomyelitis.

作者信息

Nishikawa Yoshito, Fukushima Yoshimitsu, Kirinoki Sonoko, Takagi Gen, Suda Masaya, Maki Toshio, Kumita Shinichiro

机构信息

Department of Radiology, Nippon Medical School, 1-1-5, Sendagi, Bunkydo-ku, Tokyo, 113-8603, Japan.

Department of Cardiovascular Medicine, Nippon Medical School, Tokyo, Japan.

出版信息

Eur J Hybrid Imaging. 2022 Dec 1;6(1):27. doi: 10.1186/s41824-022-00148-z.

Abstract

BACKGROUND

Patients with lower-limb osteomyelitis (LLOM) may experience major adverse events, such as lower-leg amputations or death; therefore, early diagnosis and risk stratification are essential to improve outcomes. Ga-scintigraphy is commonly used for diagnosing inflammatory diseases. Although the diagnostic performance of planar and SPECT imaging for localized lesions is limited, SPECT/CT, which simultaneously acquires functional and anatomical definition, has resulted in significant improvements to diagnostic confidence. While quantitative Ga-SPECT/CT is an emerging approach to improve diagnoses, its diagnostic performance has not been sufficiently evaluated to date. Therefore, this study aimed to evaluate the diagnostic performance of Ga-SPECT/CT with quantitative analyses for patients with LLOM.

METHODS

A total of 103 consecutive patients suspected of LLOM between April 2012 and October 2016 were analyzed. All patients underwent Ga-scintigraphy with SPECT/CT imaging. Findings were assessed visually, with higher than background accumulation considered positive, and quantitatively, using Ga-SPECT/CT images to calculate the lesion-to-background ratio (LBR), the maximum standardized uptake value (SUVmax), and total lesion uptake (TLU). Diagnoses were confirmed using pathological examinations and patient outcomes, and diagnostic performances of planar, SPECT, and SPECT/CT images were compared. To evaluate prognostic performance, all patients were observed for 5 years for occurrences of major adverse events (MAE), defined as recurrence of osteomyelitis, major leg amputation, or fatal event. Multivariate Cox regression was performed to evaluate outcome factors.

RESULTS

The overall diagnoses indicated that 54 out of 103 patients had LLOM. LBR, SUVmax, and TLU were significantly higher in patients with LLOM (12.23 vs. 1.00, 4.85 vs. 1.34, and 68.77 vs. 8.63, respectively; p < 0.001). Sensitivity and specificity were 91% and 96% for SPECT/CT with LBR, 89% and 94% for SPECT/CT with SUVmax, and 91% and 92% for SPECT/CT with TLU, respectively. MAE occurred in 23 of 54 LLOM patients (43%). TLU was found to be an independent prognostic factor (p = 0.047).

CONCLUSIONS

Ga-SPECT/CT using quantitative parameters, namely LBR and TLU, had better diagnostic and prognostic performances for patients with LLOM compared to conventional imaging. The results suggest that Ga-SPECT/CT is a good alternative for diagnosing LLOM in countries where FDG-PET/CT is not commonly available.

摘要

背景

下肢骨髓炎(LLOM)患者可能会经历严重不良事件,如下肢截肢或死亡;因此,早期诊断和风险分层对于改善预后至关重要。镓闪烁扫描常用于诊断炎症性疾病。尽管平面和SPECT成像对局限性病变的诊断性能有限,但同时获取功能和解剖学定义的SPECT/CT显著提高了诊断信心。虽然定量Ga-SPECT/CT是一种改善诊断的新兴方法,但其诊断性能迄今尚未得到充分评估。因此,本研究旨在评估定量分析的Ga-SPECT/CT对LLOM患者的诊断性能。

方法

对2012年4月至2016年10月期间连续103例疑似LLOM的患者进行分析。所有患者均接受了Ga闪烁扫描及SPECT/CT成像。通过视觉评估结果,高于背景积聚被视为阳性,并通过Ga-SPECT/CT图像进行定量分析,计算病变与背景比值(LBR)、最大标准化摄取值(SUVmax)和总病变摄取值(TLU)。通过病理检查和患者预后确认诊断,并比较平面、SPECT和SPECT/CT图像的诊断性能。为评估预后性能,对所有患者进行了5年的观察,记录严重不良事件(MAE)的发生情况,MAE定义为骨髓炎复发、大腿主要截肢或致命事件。进行多变量Cox回归以评估预后因素。

结果

总体诊断显示,103例患者中有54例患有LLOM。LLOM患者的LBR、SUVmax和TLU显著更高(分别为12.23对1.00、4.85对1.34和68.77对8.63;p < 0.001)。LBR用于SPECT/CT的敏感性和特异性分别为91%和96%,SUVmax用于SPECT/CT的敏感性和特异性分别为89%和94%,TLU用于SPECT/CT的敏感性和特异性分别为91%和92%。54例LLOM患者中有23例(43%)发生了MAE。发现TLU是一个独立的预后因素(p = 0.047)。

结论

与传统成像相比,使用定量参数LBR和TLU的Ga-SPECT/CT对LLOM患者具有更好的诊断和预后性能。结果表明,在FDG-PET/CT不常用的国家,Ga-SPECT/CT是诊断LLOM的良好替代方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/504e/9712862/bef1cdc8e816/41824_2022_148_Fig1_HTML.jpg

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