• Joeri Nicolaes
  • Steven Raeymaeckers
  • David Robben
  • Guido Wilms
  • Dirk Vandermeulen
  • Cesar Libanati
  • Marc DeBois
Objective Summary To develop a fully automated method to identify individual fractured vertebrae in computed tomography (CT) scans. Background • Despite their frequent occurrence and major associated burden, vertebral fractures remain under-diagnosed and patients under-treated. • Spine-containing CT scans provide an opportunity to identify vertebral fractures, yet they commonly go unreported by radiologists. • Automated detection of vertebral fractures would enhance medical care of patients with osteoporosis. Methods • We built a training database of 90 de-identified CT cases, acquired on three different scanners, containing 969 vertebrae scanned for various indications (mean [range] age: 81 [71; 101] years; 64% female; 12% negative cases). • We developed a data-driven, automated vertebral fracture detection method that binarily classifies fractured or normal anatomy for each vertebra present in spine-containing CT images. • We performed a stratified five-fold crossvalidation experiment comparing automated predictions with ground truth read-outs from one radiologist. Results • Of all vertebrae in the dataset, 19% were vertebral compression fractures (VCFs) (within expected prevalence for this population). • Dataset contained predominantly lumbar vertebrae and a low number of fractured vertebra between T1–10 (Figure 1). • For our automated predictions compared with the read-outs from a radiologist, the area under the receiver operating characteristic (AUROC) curve was 0.93±0.01 (Figure 2). • Example images of four cases, two with correctly identified VCFs and two with false negative and false positive VCFs, can be found in Figure 3. • These false identifications may have resulted from the limited number of T1–10 fractures in the training set. Conclusions Our automated vertebral fracture detection method demonstrated the potential for automated early identification of vertebral fractures in patients aged >50 years by opportunistically screening spinecontaining CT images. Confirmatory analysis and additional methodological improvements (e.g. automatic Genant grading, fracture location) using more extensive datasets and method validation are ongoing.
Original languageEnglish
Publication statusPublished - 20 Oct 2020
EventEuropean Calcified Tissue Society 2020 - Marseille, France
Duration: 21 Oct 202024 Oct 2020

Conference

ConferenceEuropean Calcified Tissue Society 2020
CountryFrance
Period21/10/2024/10/20

ID: 49586450