THA-AID: Deep Learning Tool for Total Hip Arthroplasty Automatic Implant Detection With Uncertainty and Outlier Quantification

Pouria Rouzrokh, John P. Mickley, Bardia Khosravi, Shahriar Faghani, Mana Moassefi, William R. Schulz, Bradley J. Erickson, Michael J. Taunton, Cody C. Wyles

Research output: Contribution to journalArticlepeer-review

Abstract

Background: Revision total hip arthroplasty (THA) requires preoperatively identifying in situ implants, a time-consuming and sometimes unachievable task. Although deep learning (DL) tools have been attempted to automate this process, existing approaches are limited by classifying few femoral and zero acetabular components, only classify on anterior-posterior (AP) radiographs, and do not report prediction uncertainty or flag outlier data. Methods: This study introduces Total Hip Arhtroplasty Automated Implant Detector (THA-AID), a DL tool trained on 241,419 radiographs that identifies common designs of 20 femoral and 8 acetabular components from AP, lateral, or oblique views and reports prediction uncertainty using conformal prediction and outlier detection using a custom framework. We evaluated THA-AID using internal, external, and out-of-domain test sets and compared its performance with human experts. Results: THA-AID achieved internal test set accuracies of 98.9% for both femoral and acetabular components with no significant differences based on radiographic view. The femoral classifier also achieved 97.0% accuracy on the external test set. Adding conformal prediction increased true label prediction by 0.1% for acetabular and 0.7 to 0.9% for femoral components. More than 99% of out-of-domain and >89% of in-domain outlier data were correctly identified by THA-AID. Conclusions: The THA-AID is an automated tool for implant identification from radiographs with exceptional performance on internal and external test sets and no decrement in performance based on radiographic view. Importantly, this is the first study in orthopedics to our knowledge including uncertainty quantification and outlier detection of a DL model.

Original languageEnglish (US)
Pages (from-to)966-973.e17
JournalJournal of Arthroplasty
Volume39
Issue number4
DOIs
StatePublished - Apr 2024

Keywords

  • artificial intelligence
  • conformal prediction
  • deep learning
  • implant identification
  • total hip arthroplasty
  • uncertainty quantification

ASJC Scopus subject areas

  • Orthopedics and Sports Medicine

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