Division of Pediatric Urology. Seattle Children's Hospital. University of Washington. Seattle USA.
Division of Pediatric Urology. Hospital for Sick Kids. University of Toronto. Canada.
J Pediatr Urol. 2023 Jun;19(3):288.e1-288.e11. doi: 10.1016/j.jpurol.2023.01.005. Epub 2023 Jan 18.
Hypospadias is an abnormal development of the urethral, ventral skin and corporeal bodies. Urethral meatus and ventral curvature have been historically the landmarks to define clinical severity. Genotyping has never been explored as a clinical predictor. Available reports have demonstrated a correlation between genetic mutations and syndromic hypospadias with poor surgical outcomes. We hypothesize that inclusion of genotyping can serve at classifying all types of hypospadias. We present the use of neural network algorithm to evaluate phenotype/genotype correlations and propose its potential clinical applicability.
A systematic review was performed from January 1974 to June 2022. Literature was retrieved from Medline, Embase, Web of Science and Google Scholar. Included manuscripts were those that had an explicit anatomical description of hypospadias phenotype (urethral meatus location following an anatomical description) and a defined genotype (genetic mutation) description. Cases with more than one variant/mutation were excluded. A comprehensive phenotype-genotype statistical analysis using neural network non-linear data modeling SPSS™ was performed.
Genotype-Phenotype analysis was performed on 1731 subjects. Of those, 959 (55%) were distal and 772 (45%) proximal. 49 genes with mutations were identified. Neural network clustering predicted better for coronal (90%) and glanular (80%), and lowest for midshaft (22%) and perineal (45%). Using genes as predictor factor only, the model was able to highly and more accurately predict the phenotype for coronal and glanular hypospadias. The following genotypes showed association to a specific phenotype: AR gene n.2058G > A for glanular (p<0.0001), n.480C > T for coronal (p = 0.034), R840C for perineal (p = 0.002), MAMLD1 gene c.2960C > T for coronal (p< 0.0001), p. G289S for glanular (p<0.0001), gene SRD5A2 607G > A for scrotal (p<0.0001), c16C > T for penoscrotal (p<0.0001), c59 T > c for perineal (p = 0.042), V89L for midshaft and scrotal (p<0.0001, p = 0.041; respectively).
Hypospadias phenotype has always been described from a purely anatomical perspective. Our results demonstrate that current phenotyping has poor correlation to the genotype. Higher genotype/phenotype correlation for distal hypospadias proves the clinical applicability of genotyping these cases. The concept and classification of differences in sexual development needs to be reconsidered given high positive yield reported for distal hypospadias. Given the better predictive value of genotyping in correlation to the phenotype, future efforts should be directed towards using the genotype.
Hypospadias has poor phenotype/genotype correlation. Sequencing all hypospadias phenotypes may add clinical value if used in association to other predictive variables. Neural network analysis may have the ability to combine all these variables for clinical prediction.
尿道下裂是尿道、腹侧皮肤和阴茎体的异常发育。尿道外口和腹侧弯曲历来是定义临床严重程度的标志。基因分型从未被探索作为临床预测指标。现有报道表明,遗传突变与综合征型尿道下裂的不良手术结果之间存在相关性。我们假设纳入基因分型可以用于对所有类型的尿道下裂进行分类。我们提出使用神经网络算法来评估表型/基因型相关性,并提出其潜在的临床应用。
从 1974 年 1 月至 2022 年 6 月进行了系统评价。从 Medline、Embase、Web of Science 和 Google Scholar 检索文献。纳入的文献是那些对尿道下裂表型(根据解剖描述的尿道外口位置)和明确的基因型(基因突变)描述有明确描述的文献。排除了有多种变异/突变的病例。使用神经网络非线性数据建模 SPSS 对 1731 例患者进行了综合表型-基因型统计分析。
对 1731 例患者进行了基因型-表型分析。其中 959 例(55%)为远端,772 例(45%)为近端。鉴定出 49 个具有突变的基因。神经网络聚类预测对冠状(90%)和龟头(80%)更好,对中轴(22%)和会阴(45%)最差。仅使用基因作为预测因子,该模型能够更准确地高度预测冠状和龟头型尿道下裂的表型。以下基因型与特定表型相关:AR 基因 n.2058G > A 与龟头(p<0.0001)、n.480C > T 与冠状(p = 0.034)、R840C 与会阴(p = 0.002)、MAMLD1 基因 c.2960C > T 与冠状(p<0.0001)、p. G289S 与龟头(p<0.0001)、基因 SRD5A2 607G > A 与阴囊(p<0.0001)、c16C > T 与阴茎阴囊(p<0.0001)、c59T > c 与会阴(p = 0.042)、V89L 与中轴和阴囊(p<0.0001,p = 0.041;分别)。
尿道下裂的表型一直以来都是从纯粹的解剖学角度来描述的。我们的结果表明,目前的表型与基因型相关性较差。远端尿道下裂更高的基因型/表型相关性证明了对这些病例进行基因分型的临床适用性。鉴于远端尿道下裂报告的阳性产量较高,需要重新考虑性发育差异的概念和分类。鉴于基因分型与表型相关性的预测价值更高,未来的努力应集中在使用基因分型上。
尿道下裂的表型与基因型相关性较差。如果与其他预测变量结合使用,对所有类型的尿道下裂进行测序可能会增加临床价值。神经网络分析可能有能力结合所有这些变量进行临床预测。