University of Washington, Paul G. Allen School of Computer Science (Director: Henry M. Levy), AC101 Paul G. Allen Center for Computer Science & Engineering, 185 Stevens Way, Seattle, WA 98195, USA.
Cleft and Craniofacial Center, Golisano Children's Hospital (Chief, Plastic Surgery: Howard Langstein, M.D.), University of Rochester Medical Center, School of Medicine and Dentistry, 601 Elmwood Avenue, Rochester, NY 14642, USA.
J Craniomaxillofac Surg. 2018 Jan;46(1):35-43. doi: 10.1016/j.jcms.2017.10.018. Epub 2017 Oct 28.
Optimization of treatment of the unilateral cleft lip nasal deformity (uCLND) is hampered by lack of objective means to assess initial severity and changes produced by treatment and growth. The purpose of this study was to develop automated 3D image analysis specific to the uCLND; assess the correlation of these measures to esthetic appraisal; measure changes that occur with treatment and differences amongst cleft types.
Dorsum Deviation, Tip-Alar Volume Ratio, Alar-Cheek Definition, and Columellar Angle were assessed using computer-vision techniques. Subjects included infants before and after primary cleft lip repair (N = 50) and children aged 8-10 years with previous cleft lip (N = 50). Two expert surgeons ranked subjects according to esthetic nose appearance.
Computer-based measurements strongly correlated with rankings of infants pre-repair (r = 0.8, 0.75, 0.41 and 0.54 for Dorsum Deviation, Tip-Alar Volume Ratio, Alar-Cheek Definition, and Columellar Angle, p < 0.01) while all measurements except Alar-Cheek Definition correlated moderately with rankings of older children post-repair (r ∼ 0.35, p < 0.01). Measurements were worse with greater severity of cleft type but improved following initial repair. Abnormal Dorsum Deviation and Columellar Angle persisted after surgery and were more severe with greater cleft type.
Four fully-automated measures were developed that are clinically relevant, agree with expert evaluations and can be followed through initial surgery and in older children. Computer vision analysis techniques can quantify the nasal deformity at different stages, offering efficient and standardized tools for large studies and data-driven conclusions.
由于缺乏客观手段来评估单侧唇裂鼻畸形(uCLND)的初始严重程度以及治疗和生长所产生的变化,因此对其治疗方案的优化受到了阻碍。本研究的目的是开发专门针对 uCLND 的自动化 3D 图像分析方法;评估这些测量方法与美学评估的相关性;测量治疗过程中发生的变化以及不同类型裂隙之间的差异。
使用计算机视觉技术评估背侧偏斜、鼻尖-鼻翼体积比、鼻翼-面颊清晰度和鼻中隔脚角度。研究对象包括初次唇裂修复前的婴儿(N=50)和之前接受过唇裂修复的 8-10 岁儿童(N=50)。两位专家根据美学鼻外观对受术者进行评分。
计算机测量值与修复前婴儿的评分高度相关(背侧偏斜、鼻尖-鼻翼体积比、鼻翼-面颊清晰度和鼻中隔脚角度的 r 值分别为 0.8、0.75、0.41 和 0.54,p<0.01),而除鼻翼-面颊清晰度外,所有测量值与修复后儿童的评分中度相关(r∼0.35,p<0.01)。裂隙类型越严重,测量值越差,但经初次修复后会有所改善。异常背侧偏斜和鼻中隔脚角度在手术后仍然存在,并且随着裂隙类型的增加而变得更加严重。
本研究开发了四种完全自动化的测量方法,这些方法具有临床相关性,与专家评估结果一致,并且可以在初次手术和年龄较大的儿童中进行跟踪。计算机视觉分析技术可以在不同阶段量化鼻畸形,为大型研究和基于数据的结论提供高效且标准化的工具。