Ognard Julien, Mesrar Jawad, Benhoumich Younes, Misery Laurent, Burdin Valerie, Ben Salem Douraied
Department of Radiology, University Hospital of Brest, Brest Cedex, France.
Laboratory of medical information processing - LaTIM INSERM UMR 1101, Brest Cedex, France.
Skin Res Technol. 2019 May;25(3):339-346. doi: 10.1111/srt.12654. Epub 2019 Jan 18.
Previous studies have demonstrated the feasibility to explore moisturization with quantification imaging based on T2 mapping. The aim of this study was to describe and validate the first robust automated method to segment the first layers of the skin.
Data were picked from a previous study that included 35 healthy subjects who underwent a 3T MRI (multi spin echo calculation T2-weighted sequence) with a microscopic coil on the left heel before and one hour after moisturization. The automatic algorithm was composed of the T2 map generation, a Canny filter, a selection of boundaries, and a local regression to delimitate stratum corneum, epidermis, and dermis. An automated affine registration was applied between the exams before and after moisturization.
The failure rate of the algorithm was below 5%. Mean computation time was 139.12s. There was a significant and strong correlation between the automatic measurements and the manual ones for the T2 values (ρ: 0.905, P < 0.001) and for the thickness measurements (ρ: 0.8663; P < 0.001). For registration, mean of the Dice index was 0.64 [0.47; 0.80] and of the Hausdorff distance was 0.29 mm 95% CI: [0.28; 0.30].
The proposed automatic method to study the first skin layers in 3T MRI using micro-coils was robust and described T2 values and thickness measurements with a strong correlation to manual measurements. The use of an automated affine registration could also permit the generation of a mapping for a visual assessment of moisturization.
先前的研究已经证明了基于T2映射的定量成像探索皮肤保湿的可行性。本研究的目的是描述并验证第一种可靠的自动分割皮肤表层的方法。
数据取自先前一项研究,该研究纳入了35名健康受试者,他们在保湿前和保湿后1小时,使用置于左脚跟的显微线圈接受了3T MRI(多自旋回波计算T2加权序列)检查。自动算法由T2图生成、Canny滤波器、边界选择和局部回归组成,用于界定角质层、表皮和真皮。在保湿前后的检查之间应用了自动仿射配准。
该算法的失败率低于5%。平均计算时间为139.12秒。T2值的自动测量值与手动测量值之间(ρ:0.905,P < 0.001)以及厚度测量值之间(ρ:0.8663;P < 0.001)存在显著且强烈的相关性。对于配准,Dice指数的平均值为0.64 [0.47;0.80],豪斯多夫距离的平均值为0.29毫米95% CI:[0.28;0.30]。
所提出的使用微线圈在3T MRI中研究皮肤表层的自动方法是可靠的,并且所描述的T2值和厚度测量值与手动测量值具有很强的相关性。使用自动仿射配准还可以生成用于保湿视觉评估的映射图。