Identification of Intracranial Germ Cell Tumors Based on Facial Photos: Exploratory Study on the Use of Deep Learning for Software Development.

in Journal of medical Internet research by Yanong Li, Yixuan He, Yawei Liu, Bingchen Wang, Bo Li, Xiaoguang Qiu

TLDR

  • The study used facial recognition technology to develop a deep learning model that can detect a rare type of brain tumor called iGCT in children and adolescents.
  • The model, called GVisageNet, was shown to accurately detect iGCTs and distinguish them from other types of brain tumors.

Abstract

Primary intracranial germ cell tumors (iGCTs) are highly malignant brain tumors that predominantly occur in children and adolescents, with an incidence rate ranking third among primary brain tumors in East Asia (8%-15%). Due to their insidious onset and impact on critical functional areas of the brain, these tumors often result in irreversible abnormalities in growth and development, as well as cognitive and motor impairments in affected children. Therefore, early diagnosis through advanced screening techniques is vital for improving patient outcomes and quality of life. This study aimed to investigate the application of facial recognition technology in the early detection of iGCTs in children and adolescents. Early diagnosis through advanced screening techniques is vital for improving patient outcomes and quality of life. A multicenter, phased approach was adopted for the development and validation of a deep learning model, GVisageNet, dedicated to the screening of midline brain tumors from normal controls (NCs) and iGCTs from other midline brain tumors. The study comprised the collection and division of datasets into training (n=847, iGCTs=358, NCs=300, other midline brain tumors=189) and testing (n=212, iGCTs=79, NCs=70, other midline brain tumors=63), with an additional independent validation dataset (n=336, iGCTs=130, NCs=100, other midline brain tumors=106) sourced from 4 medical institutions. A regression model using clinically relevant, statistically significant data was developed and combined with GVisageNet outputs to create a hybrid model. This integration sought to assess the incremental value of clinical data. The model's predictive mechanisms were explored through correlation analyses with endocrine indicators and stratified evaluations based on the degree of hypothalamic-pituitary-target axis damage. Performance metrics included area under the curve (AUC), accuracy, sensitivity, and specificity. On the independent validation dataset, GVisageNet achieved an AUC of 0.938 (P<.01) in distinguishing midline brain tumors from NCs. Further, GVisageNet demonstrated significant diagnostic capability in distinguishing iGCTs from the other midline brain tumors, achieving an AUC of 0.739, which is superior to the regression model alone (AUC=0.632, P<.001) but less than the hybrid model (AUC=0.789, P=.04). Significant correlations were found between the GVisageNet's outputs and 7 endocrine indicators. Performance varied with hypothalamic-pituitary-target axis damage, indicating a further understanding of the working mechanism of GVisageNet. GVisageNet, capable of high accuracy both independently and with clinical data, shows substantial potential for early iGCTs detection, highlighting the importance of combining deep learning with clinical insights for personalized health care.

Overview

  • The study explores the application of facial recognition technology in early detection of primary intracranial germ cell tumors (iGCTs) in children and adolescents.
  • A deep learning model, GVisageNet, was developed and validated to distinguish midline brain tumors from normal controls and iGCTs from other midline brain tumors.
  • The study aims to improve patient outcomes and quality of life through early diagnosis and treatment of iGCTs, which can cause irreversible abnormalities and cognitive and motor impairments.

Comparative Analysis & Findings

  • GVisageNet achieved an area under the curve (AUC) of 0.938 in distinguishing midline brain tumors from normal controls on the independent validation dataset.
  • GVisageNet demonstrated significant diagnostic capability in distinguishing iGCTs from other midline brain tumors, with an AUC of 0.739.
  • The hybrid model combining clinical data and GVisageNet outputs performed best, with an AUC of 0.789.

Implications and Future Directions

  • The study highlights the potential of combining deep learning with clinical insights for personalized healthcare, especially in the early detection of iGCTs.
  • Future studies can focus on further improving the performance of GVisageNet and exploring its application in other clinical contexts.
  • The study's findings support the importance of early diagnosis and treatment of iGCTs to improve patient outcomes and quality of life.