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Conference Proceeding

Conference Proceeding

1st Panhellenic Conference of Medical Physics

2022

Deep learning for the detection and localization of abnormal parathyroid glands in patients with hyperparathyroidism

Ioannis D. Apostolopoulos, Nikolaos Papathanasiou, George Panayiotakis, Dimitris Apostolopoulos

Abstract

Background: Preoperative imaging methods for the localization of abnormal parathyroid glands are widely used to facilitate ensuing surgery. Parathyroid scintigraphy with 99mTc-sestamibi (MIBI) is an established technique. However, little has been investigated regarding MIBI scan and Deep Learning (DL) algorithms for parathyroid gland identification. Materials and Methods: This retrospective study enrolled 418
patients, 397 with primary and 21 with secondary or tertiary hyperparathyroidism, who underwent parathyroid scintigraphy with double-phase and thyroid subtraction techniques. Data were collected from the archive of our laboratory. The study proposes a three-path network approach, employing the state-of-the-art Convolutional Neural Network called VGG-19. Image input to the model involved a set of three scintigraphic images in each case: MIBI early phase, MIBI late phase and 99mTcO4 thyroid scan. A medical expert’s diagnosis provided the ground truth for positive/negative results. Moreover, the image produced by the model was compared with the original scintigraphic images to examine the exact localization of findings. Results: Medical experts identified 391 abnormal glands in 296 patients. On a patient basis, the DL model attained an accuracy of 95.0% (sensitivity 94.6%; specificity 96.2%) in distinguishing normal from abnormal scintigraphic images. On a parathyroid gland basis and in achieving identical positioning of the findings with experts, the model correctly identified and localized 324/391 glands (82.9%) and yielded 74 false focal results (false positive rate 18.6%). These numbers correspond to an 81.4% positive and a 60.4% negative predictive value on a parathyroid gland level. Conclusion: Deep Learning in parathyroid scintigraphy can potentially assist medical experts in identifying abnormal findings. Future research should be directed mainly towards false positive reduction methods.

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