Artificial Intelligence-based Models for Spine Malalignment Auto-analysis
- Conditions
- Adolescent Idiopathic Scoliosis
- Registration Number
- NCT06711757
- Lead Sponsor
- The University of Hong Kong
- Brief Summary
This retrospective study aimed to enhance and validate a model for diagnosing adolescent idiopathic scoliosis (AIS) across multiple medical centers. The study included 2,763 participants from prestigious hospitals in mainland China and Hong Kong. X-rays were used to develop and validate the model, with data from different hospitals to ensure robustness. Participants aged 10-18 with confirmed AIS were enrolled, and data were deidentified for privacy. The model was optimized using training data and validated internally before being deployed for real-world application. A novel data augmentation technique was used to address data heterogeneity, and a standardized analysis platform, AlignProCARE, was employed for evaluation. X-rays were annotated with vertebra landmarks, and traditional and intensity-based data augmentation methods were applied for image processing. Coronal Cobb angle was used to evaluate spinal alignment, with severity classified as normal-mild, moderate, or severe. The model's performance was statistically assessed for accuracy in predicting Cobb angle and severity grading. Overall, the study aimed to provide a reliable diagnostic tool for AIS analysis in clinical practice, improving efficiency and standardization in diagnosis and treatment.
- Detailed Description
This retrospective study involved collecting posteroanterior whole-spine X-rays from 2,763 individuals at 5 renowned hospitals in mainland China and 2 hospitals in Hong Kong over a period from January 1, 2012, to April 4, 2021. X-rays from Queen Mary Hospital and Duchess of Kent Children's Hospital at Sandy Bay in Hong Kong, known as the QMH\&DKCH cohort, were specifically used for model development. Within this cohort, 86.5% (1686 out of 1950 patients) were randomly chosen as the training set for model development, while the remaining 13.5% (264 patients) formed the internal validation set to ensure the model's performance was independently tested. Additionally, data from five prominent hospitals in mainland China were compiled into external validation datasets to assess the model's efficacy. These hospitals included Peking Union Medical College Hospital, Nanfang Hospital, Jishuitan Hospital, Ruijin Hospital, and Huashan Hospital. All data were deidentified before being utilized for model development and validation. The study enrolled participants aged 10 to 18 years with confirmed presence or absence of adolescent idiopathic scoliosis (AIS). Demographic information such as age, sex, and BMI was extracted from medical records. Exclusion criteria were applied to ensure the study's specificity, excluding individuals with other types of scoliosis, skin diseases that could impact imaging, those unable to stand, and cases where standing imaging was not feasible. The study design, illustrated in Figure 1, consisted of two main phases: model development and real-world application. The model was optimized and validated using the QMH\&DKCH cohort data before being deployed on the AlignProCARE platform for clinical application across different centers. In the real-world application stage, five medical centers utilized the AlignProCARE software to upload and analyze patient X-ray images for diagnostic purposes.
Recruitment & Eligibility
- Status
- COMPLETED
- Sex
- All
- Target Recruitment
- 3015
- Participants aged between 10 and 18 years old,
- A pathological confirmation of the presence or absence of AIS
- Patients with other types of scoliosis, such as congenital or neuromuscular scoliosis
- Patients with skin diseases, such as acne, psoriasis, skin pigmentation and rash that can affect imaging
- Individuals that cannot stand up
- Cases where standing imaging was not feasible or other conditions that could impair image acquisition.
Study & Design
- Study Type
- OBSERVATIONAL
- Study Design
- Not specified
- Primary Outcome Measures
Name Time Method Cobb Angle prediction accuracy through study completion, an average of 1 year Coronal Cobb angle was adopted as the standard measurement to evaluate the coronal alignment of each AIS patient. We evaluate the performance of our artificial intelligence model based on Cobb Angle prediction accuracy.
- Secondary Outcome Measures
Name Time Method AIS severity classification accuracy through study completion, an average of 1 year Deformities with a CA exceeding 40° were deemed severe, those ranging from 20° to 40° were labelled as moderate, and angles from 0° to 20° were identified as normal to mild.
Related Research Topics
Explore scientific publications, clinical data analysis, treatment approaches, and expert-compiled information related to the mechanisms and outcomes of this trial. Click any topic for comprehensive research insights.
Trial Locations
- Locations (1)
Digital Health Laboratory, Li Ka Shing Faculty of Medicine, The University of Hong Kong
🇭🇰Hong Kong, Hong Kong