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Automated liver lesion detection in 68Ga DOTATATE PET/CT using a deep fully convolutional neural network

Jonathan Wehrend, Michael Silosky, Fuyong Xing, Bennett B. Chin

2021EJNMMI Research33 citationsDOIOpen Access PDF

Abstract

Abstract Background Gastroenteropancreatic neuroendocrine tumors most commonly metastasize to the liver; however, high normal background 68 Ga-DOTATATE activity and high image noise make metastatic lesions difficult to detect. The purpose of this study is to develop a rapid, automated and highly specific method to identify 68 Ga-DOTATATE PET/CT hepatic lesions using a 2D U-Net convolutional neural network. Methods A retrospective study of 68 Ga-DOTATATE PET/CT patient studies ( n = 125; 57 with 68 Ga-DOTATATE hepatic lesions and 68 without) was evaluated. The dataset was randomly divided into 75 studies for the training set (36 abnormal, 39 normal), 25 for the validation set (11 abnormal, 14 normal) and 25 for the testing set (11 abnormal, 14 normal). Hepatic lesions were physician annotated using a modified PERCIST threshold, and boundary definition by gradient edge detection. The 2D U-Net was trained independently five times for 100,000 iterations using a linear combination of binary cross-entropy and dice losses with a stochastic gradient descent algorithm. Performance metrics included: positive predictive value (PPV), sensitivity, F 1 score and area under the precision–recall curve (PR-AUC). Five different pixel area thresholds were used to filter noisy predictions. Results A total of 233 lesions were annotated with each abnormal study containing a mean of 4 ± 2.75 lesions. A pixel filter of 20 produced the highest mean PPV 0.94 ± 0.01. A pixel filter of 5 produced the highest mean sensitivity 0.74 ± 0.02. The highest mean F 1 score 0.79 ± 0.01 was produced with a 20 pixel filter. The highest mean PR-AUC 0.73 ± 0.03 was produced with a 15 pixel filter. Conclusion Deep neural networks can automatically detect hepatic lesions in 68 Ga-DOTATATE PET. Ongoing improvements in data annotation methods, increasing sample sizes and training methods are anticipated to further improve detection performance.

Topics & Concepts

MedicineConvolutional neural networkNeuroendocrine tumorsNuclear medicinePixelArtificial intelligenceReceiver operating characteristicData setRadiologyPattern recognition (psychology)PathologyInternal medicineComputer scienceNeuroendocrine Tumor Research AdvancesPancreatic and Hepatic Oncology ResearchLung Cancer Research Studies
Automated liver lesion detection in 68Ga DOTATATE PET/CT using a deep fully convolutional neural network | Litcius