Gassert, F.G.* ; Lang, D.M. ; Hesse, N.* ; Dürr, H.R.* ; Klein, A.* ; Kohll, L.* ; Hinterwimmer, F.* ; Luitjens, J.* ; Weissinger, S.E.* ; Peeken, J.C. ; Mogler, C.* ; Knebel, C.* ; Bartzsch, S. ; Gassert, F.T.* ; Gersing, A.S.*
     
    
        
A deep learning model for classification of chondroid tumors on CT images.
    
    
        
    
    
        
        BMC Cancer 25:561 (2025)
    
    
    
      
      
	
	    BACKGROUND: Differentiating chondroid tumors is crucial for proper patient management. This study aimed to develop a deep learning model (DLM) for classifying enchondromas, atypical cartilaginous tumors (ACT), and high-grade chondrosarcomas using CT images. METHODS: This retrospective study analyzed chondroid tumors from two independent cohorts. Tumors were segmented on CT images. A 2D convolutional neural network was developed and tested using split-sample and geographical validation. Four radiologists blinded to patient data and the DLM results with various levels of experience performed readings of the external test dataset for comparison. Performance metrics included accuracy, sensitivity, specificity, and area under the curve (AUC). RESULTS: CTs from 344 patients (175 women; age = 50.3 ± 14.3 years;) with diagnosed enchondroma (n = 124), ACT (n = 92) or high-grade chondrosarcoma (n = 128) were analyzed. The DLM demonstrated comparable performance to radiologists (p > 0.05), achieving an AUC of 0.88 for distinguishing enchondromas from chondrosarcomas and 0.82 for differentiating enchondromas from ACTs. The DLM and musculoskeletal expert showed similar performance in differentiating ACTs from high-grade chondrosarcomas (p = 0.26), with an AUC of 0.64 and 0.56, respectively. CONCLUSIONS: The DLM reliably differentiates benign from malignant cartilaginous tumors and is particularly useful for the differentiation between ACTs and Enchondromas, which is challenging based on CT images only. However, the differentiation between ACTs and high-grade chondrosarcomas remains difficult, reflecting known diagnostic challenges in radiology.
	
	
	    
	
       
      
	
	    
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        Publication type
        Article: Journal article
    
 
    
        Document type
        Scientific Article
    
 
    
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        Keywords
        Chondrosarcoma ; Computed Tomography ; Deep Learning ; Enchondroma; Atypical Cartilaginous Tumors; Primary Bone-tumors; Enchondroma; Grade; Chondrosarcoma; Features
    
 
    
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        Language
        english
    
 
    
        Publication Year
        2025
    
 
    
        Prepublished in Year
        0
    
 
    
        HGF-reported in Year
        2025
    
 
    
    
        ISSN (print) / ISBN
        1471-2407
    
 
    
        e-ISSN
        1471-2407
    
 
    
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	    Volume: 25,  
	    Issue: 1,  
	    Pages: ,  
	    Article Number: 561 
	    Supplement: ,  
	
    
 
    
        
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            Publisher
            BioMed Central
        
 
        
            Publishing Place
            Campus, 4 Crinan St, London N1 9xw, England
        
 
	
        
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        Reviewing status
        Peer reviewed
    
 
     
    
        POF-Topic(s)
        30203 - Molecular Targets and Therapies
    
 
    
        Research field(s)
        Radiation Sciences
    
 
    
        PSP Element(s)
        G-501300-001
    
 
    
        Grants
        Technische Universitt Mnchen (1025)
    
 
    
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        Erfassungsdatum
        2025-05-09