Kim Hayoun, Yu Inkyu
Departments of Radiology, Eulji University Hospital, Eulji University College of Medicine, 95 Dunsanseo-ro, Seo-gu, Daejeon 35233, Republic of Korea.
J Clin Med. 2024 Dec 24;14(1):15. doi: 10.3390/jcm14010015.
It is known that the pituitary gland volume (PV) in idiopathic central precocious puberty (IPP) is significantly higher than in healthy children. However, most PV measurements rely on manual quantitative methods, which are time-consuming and labor-intensive. This study aimed to automatically measure the PV of patients with IPP using artificial intelligence to accurately quantify the correlation between IPP and PV, and to improve the efficiency of diagnosing IPP. From July 2016 to February 2024, 226 patients who had been diagnosed with IPP and undergone brain MR imaging were included (117 males and 109 females; median age, 8 years; interquartile range, 7-9 years). A control group of 52 patients who had undergone brain MR imaging without symptoms of precocious puberty was also included (37 males and 15 females; median age, 8 years; interquartile range, 8-9 years). Measurement variability was examined between manual and automatic measurements (n = 57). The pituitary gland volume was measured using 1-3 mm thickness T1 sagittal images from non-enhanced brain MR imaging, analyzed with the MA-net artificial intelligence learning method. Physical characteristics (height, weight, and age) were correlated with PV, and the difference in PV between the IPP group and the control group was evaluated. The intraclass correlation coefficient was 0.993 for agreement between manual and automatic measurement. Confounding bias was reduced by PSM. PV was positively correlated with age and body weight in the IPP group (17.4%, = 0.009, and 14.0%, = 0.037). The median values of PV were 432 mm³ in the IPP group and 380 mm³ in the control group, showing a significant difference of 52 mm³ ( < 0.05). The PV in the IPP group was significantly higher than in the control group. Automatically measuring PV along with assessing hormone levels could enable a faster and more straightforward diagnosis of IPP.
已知特发性中枢性性早熟(IPP)患者的垂体体积(PV)显著高于健康儿童。然而,大多数PV测量依赖于手动定量方法,既耗时又费力。本研究旨在利用人工智能自动测量IPP患者的PV,以准确量化IPP与PV之间的相关性,并提高IPP的诊断效率。2016年7月至2024年2月,纳入226例已确诊为IPP并接受脑部磁共振成像检查的患者(男117例,女109例;中位年龄8岁;四分位间距7 - 9岁)。还纳入了52例无症状性早熟且接受过脑部磁共振成像检查的对照组患者(男37例,女15例;中位年龄8岁;四分位间距8 - 9岁)。对手动测量和自动测量之间的测量变异性进行了检验(n = 57)。使用未增强脑部磁共振成像的1 - 3毫米厚T1矢状位图像测量垂体体积,并采用MA-net人工智能学习方法进行分析。将身体特征(身高、体重和年龄)与PV进行相关性分析,并评估IPP组与对照组之间PV的差异。手动测量与自动测量之间的组内相关系数为0.993。通过倾向得分匹配(PSM)减少了混杂偏倚。IPP组中PV与年龄和体重呈正相关(分别为17.4%,P = 0.009;14.0%,P = 0.037)。IPP组PV的中位数为432立方毫米,对照组为380立方毫米,差异显著为52立方毫米(P < 0.05)。IPP组的PV显著高于对照组。自动测量PV并同时评估激素水平能够实现对IPP更快、更直接的诊断。