2020
DOI: 10.1002/ima.22443
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A serialized classification method for pulmonary nodules based on lightweight cascaded convolutional neural networklong short‐term memory

Abstract: Computer Assisted Diagnosis (CAD) is an effective method to detect lung cancer from computed tomography (CT) scans. The development of artificial neural network makes CAD more accurate in detecting pathological changes. Due to the complexity of the lung environment, the existing neural network training still requires large datasets, excessive time, and memory space. To meet the challenge, we analysis 3D volumes as serialized 2D slices and present a new neural network structure lightweight convolutional neural … Show more

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Cited by 3 publications
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“…We read the remaining 253 full texts, and 227 studies were excluded for the following reasons: (a) 41 were benign and malignant diagnoses; (b) 156 only included sensitivity results; (c) 22 were without the relevant data; and (d) eight were review articles. Finally, 26 studies (1944), including 2,391,702 ROIs, were included in the quantitative assessment and final combinatorial analysis. The flow diagram is shown in Fig.…”
Section: Resultsmentioning
confidence: 99%
“…We read the remaining 253 full texts, and 227 studies were excluded for the following reasons: (a) 41 were benign and malignant diagnoses; (b) 156 only included sensitivity results; (c) 22 were without the relevant data; and (d) eight were review articles. Finally, 26 studies (1944), including 2,391,702 ROIs, were included in the quantitative assessment and final combinatorial analysis. The flow diagram is shown in Fig.…”
Section: Resultsmentioning
confidence: 99%