He Lili, Parikh Nehal A
Center for Perinatal Research, The Research Institute at Nationwide Children's Hospital, Columbus, Ohio, United States of America.
Center for Perinatal Research, The Research Institute at Nationwide Children's Hospital, Columbus, Ohio, United States of America ; Department of Pediatrics, The Ohio State University College of Medicine, Columbus, Ohio, United States of America.
PLoS One. 2013 Dec 31;8(12):e85475. doi: 10.1371/journal.pone.0085475. eCollection 2013.
The developmental significance of the frequently encountered white matter signal abnormality (WMSA) findings on MRI around term-equivalent age (TEA) in very preterm infants, remains in question. The use of conventional qualitative analysis methods is subjective, lacks sufficient reliability for producing accurate and reproducible WMSA diagnosis, and possibly contributes to suboptimal neurodevelopmental outcome prediction. The advantages of quantitative over qualitative diagnostic approaches have been widely acknowledged and demonstrated. The purpose of this study is to objectively and accurately quantify WMSA on TEA T2-weighted MRI in very preterm infants and to assess whether such quantifications predict 2-year language and cognitive developmental outcomes. To this end, we constructed a probabilistic brain atlas, exclusively for very preterm infants to embed tissue distributions (i.e. to encode shapes, locations and geometrical proportion of anatomical structures). Guided with this atlas, we then developed a fully automated method for WMSA detection and quantification using T2-weighted images. Computer simulations and experiments using in vivo very preterm data showed very high detection accuracy. WMSA volume, particularly in the centrum semiovale, on TEA MRI was a significant predictor of standardized language and cognitive scores at 2 years of age. Independent validation of our automated WMSA detection algorithm and school age follow-up are important next steps.
极早产儿在足月相当年龄(TEA)左右的MRI上经常出现的白质信号异常(WMSA)表现的发育意义仍存在疑问。传统定性分析方法的使用具有主观性,在进行准确且可重复的WMSA诊断时缺乏足够的可靠性,并且可能导致神经发育结局预测欠佳。定量诊断方法相对于定性诊断方法的优势已得到广泛认可和证明。本研究的目的是客观、准确地量化极早产儿TEA时T2加权MRI上的WMSA,并评估这种量化是否能预测2岁时的语言和认知发育结局。为此,我们构建了一个专门针对极早产儿的概率性脑图谱,以嵌入组织分布(即对解剖结构的形状、位置和几何比例进行编码)。在此图谱的指导下,我们随后开发了一种使用T2加权图像进行WMSA检测和量化的全自动方法。使用极早产儿体内数据进行的计算机模拟和实验显示出非常高的检测准确性。TEA MRI上的WMSA体积,尤其是半卵圆中心的WMSA体积,是2岁时标准化语言和认知评分的重要预测指标。对我们的WMSA自动检测算法进行独立验证以及学龄期随访是接下来的重要步骤。