2000
DOI: 10.2214/ajr.174.1.1740071
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Development of a Digital Image Database for Chest Radiographs With and Without a Lung Nodule

Abstract: This database can be useful for many purposes, including research, education, quality assurance, and other demonstrations.

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Cited by 826 publications
(212 citation statements)
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“…11 We arranged them into 1000 signal-free patches, and 1000 patches with a signal inserted in the middle. The images are then artificially degraded using a Gaussian blur with parameter σ b , and subsequently corrupted with noise with variance σ 2 n .…”
Section: Resultsmentioning
confidence: 99%
“…11 We arranged them into 1000 signal-free patches, and 1000 patches with a signal inserted in the middle. The images are then artificially degraded using a Gaussian blur with parameter σ b , and subsequently corrupted with noise with variance σ 2 n .…”
Section: Resultsmentioning
confidence: 99%
“…Therefore, we extract 2000 patches of size 100 × 100 from the chest radiography database of [17], and 1000 signal-free patches, and 1000 patches with a signal inserted in the middle. The images are then artificially degraded using a Gaussian blur with parameter σ b , and next corrupted with noise with variance σ 2 n .…”
Section: Resultsmentioning
confidence: 99%
“…Bobadilla et al tried a family of CNNs known as DeepCNets composed of alternating convolutional and maxpooling layers with a linearly increasing number of filters. They trained and tested the Japanese Society of Radiological Technology (JSRT) database [17] composed of 154 nodules and 93 non-nodule chest radiographs. Their results show that CNNs can operate effectively on lung nodule classification through data augmentation and dropout regularization and achieve comparable results with state-of-the-art performance [18].…”
Section: Cancer Screening In Chest X-raymentioning
confidence: 99%