Evaluating Computer Vision, Large Language, and Genome-Wide Association Models in a Limited Sized Patient Cohort for Pre-Operative Risk Stratification in Adult Spinal Deformity Surgery.
Ethan SchonfeldAaradhya PantAaryan ShahSina SadeghzadehDhiraj PangalAdrian RodriguesHyeon Joo YooNeelan MarianayagamGhani HaiderAnand VeeravaguPublished in: Journal of clinical medicine (2024)
Background : Adult spinal deformities (ASD) are varied spinal abnormalities, often necessitating surgical intervention when associated with pain, worsening deformity, or worsening function. Predicting post-operative complications and revision surgery is critical for surgical planning and patient counseling. Due to the relatively small number of cases of ASD surgery, machine learning applications have been limited to traditional models (e.g., logistic regression or standard neural networks) and coarse clinical variables. We present the novel application of advanced models (CNN, LLM, GWAS) using complex data types (radiographs, clinical notes, genomics) for ASD outcome prediction. Methods: We developed a CNN trained on 209 ASD patients (1549 radiographs) from the Stanford Research Repository, a CNN pre-trained on VinDr-SpineXR (10,468 spine radiographs), and an LLM using free-text clinical notes from the same 209 patients, trained via Gatortron. Additionally, we conducted a GWAS using the UK Biobank, contrasting 540 surgical ASD patients with 7355 non-surgical ASD patients. Results: The LLM notably outperformed the CNN in predicting pulmonary complications (F1: 0.545 vs. 0.2881), neurological complications (F1: 0.250 vs. 0.224), and sepsis (F1: 0.382 vs. 0.132). The pre-trained CNN showed improved sepsis prediction (AUC: 0.638 vs. 0.534) but reduced performance for neurological complication prediction (AUC: 0.545 vs. 0.619). The LLM demonstrated high specificity (0.946) and positive predictive value (0.467) for neurological complications. The GWAS identified 21 significant ( p < 10 -5 ) SNPs associated with ASD surgery risk (OR: mean: 3.17, SD: 1.92, median: 2.78), with the highest odds ratio (8.06) for the LDB2 gene, which is implicated in ectoderm differentiation. Conclusions: This study exemplifies the innovative application of cutting-edge models to forecast outcomes in ASD, underscoring the utility of complex data in outcome prediction for neurosurgical conditions. It demonstrates the promise of genetic models when identifying surgical risks and supports the integration of complex machine learning tools for informed surgical decision-making in ASD.
Keyphrases
- autism spectrum disorder
- attention deficit hyperactivity disorder
- machine learning
- end stage renal disease
- minimally invasive
- intellectual disability
- ejection fraction
- newly diagnosed
- coronary artery bypass
- spinal cord
- chronic kidney disease
- peritoneal dialysis
- risk factors
- prognostic factors
- acute kidney injury
- big data
- genome wide
- risk assessment
- pulmonary hypertension
- chronic pain
- case report
- patient reported outcomes
- artificial intelligence
- men who have sex with men
- coronary artery disease
- single cell
- neuropathic pain
- skeletal muscle
- total hip arthroplasty
- human immunodeficiency virus
- cerebral ischemia
- electronic health record
- hepatitis c virus
- human health
- postoperative pain