Deep learning-based differentiation of peripheral high-flow and low-flow vascular malformations in T2-weighted short tau inversion recovery MRI

被引:1
作者
Hammer, Simone [1 ]
Nunes, Danilo Weber [2 ]
Hammer, Michael [2 ]
Zeman, Florian [3 ]
Akers, Michael [1 ]
Goetza, Andrea [1 ]
Balla, Annika [1 ]
Doppler, Michael Christian [4 ]
Fellner, Claudia [1 ]
da Silvaa, Natascha Platz Batista [1 ]
Thurn, Sylvia [1 ]
Verloh, Niklas
Stroszczynski, Christian [1 ]
Wohlgemuth, Walter Alexander [5 ]
Palm, Christoph [2 ,6 ,7 ]
Uller, Wibke [4 ]
机构
[1] Univ Regensburg, Med Ctr, Dept Radiol, Fac Med, Franz Josef Strauss Allee 11, D-93053 Regensburg, Germany
[2] Ostbayer Tech Hsch Regensburg OTH Regensburg, Regensburg Med Image Comp ReMIC, Regensburg, Germany
[3] Univ Regensburg, Ctr Clin Trials, Med Ctr, Fac Med, Regensburg, Germany
[4] Univ Freiburg, Med Ctr, Dept Diagnost & Intervent Radiol, Fac Med, Freiburg, Germany
[5] Univ Halle Saale, Med Ctr, Dept Radiol, Fac Med, Halle, Germany
[6] OTH Regensburg, Regensburg Ctr Biomed Engn RCBE, Regensburg, Germany
[7] Univ Regensburg, Regensburg, Germany
关键词
Vascular malformation; deep learning; magnetic resonance imaging; MAGNETIC-RESONANCE ANGIOGRAPHY; CLASSIFICATION; DIAGNOSIS; TUMORS;
D O I
10.3233/CH-232071
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BACKGROUND: Differentiation of high-flow from low-flow vascular malformations (VMs) is crucial for therapeutic management of this orphan disease. OBJECTIVE: Aconvolutional neural network (CNN) was evaluated for differentiation of peripheral vascular malformations (VMs) on T2-weighted short tau inversion recovery (STIR) MRI. METHODS: 527 MRIs (386 low-flow and 141 high-flow VMs) were randomly divided into training, validation and test set for this single-center study. 1) Results of the CNN's diagnostic performance were compared with that of two expert and four junior radiologists. 2) The influence of CNN's prediction on the radiologists' performance and diagnostic certainty was evaluated. 3) Junior radiologists' performance after self-training was compared with that of the CNN. RESULTS: Compared with the expert radiologists the CNN achieved similar accuracy (92% vs. 97%, p = 0.11), sensitivity (80% vs. 93%, p = 0.16) and specificity (97% vs. 100%, p = 0.50). In comparison to the junior radiologists, the CNN had a higher specificity and accuracy (97% vs. 80%, p < 0.001; 92% vs. 77%, p < 0.001). CNN assistance had no significant influence on their diagnostic performance and certainty. After self-training, the junior radiologists' specificity and accuracy improved and were comparable to that of the CNN. CONCLUSIONS: Diagnostic performance of the CNN for differentiating high-flow from low-flow VM was comparable to that of expert radiologists. CNN did not significantly improve the simulated daily practice of junior radiologists, self-training was more effective.
引用
收藏
页码:221 / 235
页数:15
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