An artificial intelligence framework for the diagnosis of prosthetic joint infection based on Tc-99m-MDP dynamic bone scintigraphy

European radiology(2023)

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摘要
ObjectivesDynamic bone scintigraphy (DBS) is the first widely reliable and simple imaging modality in nuclear medicine that can be used to diagnose prosthetic joint infection (PJI). We aimed to apply artificial intelligence to diagnose PJI in patients after total hip or knee arthroplasty (THA or TKA) based on Tc-99m-methylene diphosphonate (Tc-99m-MDP) DBS.MethodsA total of 449 patients (255 THAs and 194 TKAs) with a final diagnosis were retrospectively enrolled and analyzed. The dataset was divided into a training and validation set and an independent test set. A customized framework composed of two data preprocessing algorithms and a diagnosis model (dynamic bone scintigraphy effective neural network, DBS-eNet) was compared with mainstream modified classification models and experienced nuclear medicine specialists on corresponding datasets.ResultsIn the fivefold cross-validation test, diagnostic accuracies of 86.48% for prosthetic knee infection (PKI) and 86.33% for prosthetic hip infection (PHI) were obtained using the proposed framework. On the independent test set, the diagnostic accuracies and AUC values were 87.74% and 0.957 for PKI and 86.36% and 0.906 for PHI, respectively. The customized framework demonstrated better overall diagnostic performance compared to other classification models and showed superiority in diagnosing PKI and consistency in diagnosing PHI compared to specialists.ConclusionThe customized framework can be used to effectively and accurately diagnose PJI based on Tc-99m-MDP DBS. The excellent diagnostic performance of this method indicates its potential clinical practical value in the future.
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关键词
Artificial intelligence,Hip arthroplasty,Infectious arthritis,Knee arthroplasty,Radionuclide imaging
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