Deep-learning-based cardiac amyloidosis classification from early acquired pet images

被引:18
|
作者
Santarelli, Maria Filomena [1 ]
Genovesi, Dario [2 ]
Positano, Vincenzo [2 ]
Scipioni, Michele [3 ,4 ]
Vergaro, Giuseppe [5 ]
Favilli, Brunella [2 ]
Giorgetti, Assuero [2 ]
Emdin, Michele [5 ]
Landini, Luigi [6 ]
Marzullo, Paolo [2 ]
机构
[1] CNR, Inst Clin Physiol, CNR Res Area Via Moruzzi 1, I-56124 Pisa, Italy
[2] Fdn Toscana G Monasterio, Pisa, Italy
[3] Massachusetts Gen Hosp, Athinoula A Martinos Ctr Biomed Imaging, Boston, MA 02114 USA
[4] Harvard Med Sch, Boston, MA 02115 USA
[5] Scuola Univ Super A Anna, Pisa, Italy
[6] Pisa Univ, Dipartimento Ingn Informaz DII, Pisa, Italy
来源
关键词
Cardiac amyloidosis; 18F]-florbetaben; Deep learning; Convolutional neural network; Amyloid light chain (AL); Amyloid transthyretin (ATTR); DIAGNOSIS; FEASIBILITY;
D O I
10.1007/s10554-021-02190-7
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
The objective of the present work was to evaluate the potential of deep learning tools for characterizing the presence of cardiac amyloidosis from early acquired PET images, i.e. 15 min after [18F]-Florbetaben tracer injection. 47 subjects were included in the study: 13 patients with transthyretin-related amyloidosis cardiac amyloidosis (ATTR-CA), 15 patients with immunoglobulin light-chain amyloidosis (AL-CA), and 19 control-patients (CTRL). [18F]-Florbetaben PET/CT images were acquired in list mode and data was sorted into a sinogram, covering a time interval of 5 min starting 15 min after the injection. The resulting sinogram was reconstructed using OSEM iterative algorithm. A deep convolutional neural network (CAclassNet) was designed and implemented, consisting of five 2D convolutional layers, three fully connected layers and a final classifier returning AL, ATTR and CTRL scores. A total of 1107 2D images (375 from AL-subtype patients, 312 from ATTR-subtype, and 420 from Controls) have been considered in the study and used to train, validate and test the proposed network. CAclassNet cross-validation resulted with train error mean +/- sd of 2.001% +/- 0.96%, validation error of 4.5% +/- 2.26%, and net accuracy of 95.49% +/- 2.26%. Network test error resulted in a mean +/- sd values of 10.73% +/- 0.76%. Sensitivity, specificity, and accuracy evaluated on the test dataset were respectively for AL-CA sub-type: 1, 0.912, 0.936; for ATTR-CA: 0.935, 0.897, 0.972; for control subjects: 0.809, 0.971, 0.909. In conclusion, the proposed CAclassNet model seems very promising as an aid for the clinician in the diagnosis of CA from cardiac [18F]-Florbetaben PET images acquired a few minutes after the injection.
引用
收藏
页码:2327 / 2335
页数:9
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