Optimizing Convolutional Neural Networks for Chronic Obstructive Pulmonary Disease Detection in Clinical Computed Tomography Imaging
We aim to optimize the binary detection of Chronic Obstructive Pulmonary Disease (COPD) based on emphysema presence in the lung with convolutional neural networks (CNN) by exploring manually adjusted versus automated window-setting optimization (WSO) on computed tomography (CT) images. 7,194 CT imag...
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Zusammenfassung: | We aim to optimize the binary detection of Chronic Obstructive Pulmonary
Disease (COPD) based on emphysema presence in the lung with convolutional
neural networks (CNN) by exploring manually adjusted versus automated
window-setting optimization (WSO) on computed tomography (CT) images. 7,194 CT
images (3,597 with COPD; 3,597 healthy controls) from 78 subjects (43 with
COPD; 35 healthy controls) were selected retrospectively (10.2018-12.2019) and
preprocessed. For each image, intensity values were manually clipped to the
emphysema window setting and a baseline 'full-range' window setting.
Class-balanced train, validation, and test sets contained 3,392, 1,114, and
2,688 images. The network backbone was optimized by comparing various CNN
architectures. Furthermore, automated WSO was implemented by adding a
customized layer to the model. The image-level area under the Receiver
Operating Characteristics curve (AUC) [lower, upper limit 95% confidence] was
utilized to compare model variations. Repeated inference (n=7) on the test set
showed that the DenseNet was the most efficient backbone and achieved a mean
AUC of 0.80 [0.76, 0.85] without WSO. Comparably, with input images manually
adjusted to the emphysema window, the DenseNet model predicted COPD with a mean
AUC of 0.86 [0.82, 0.89]. By adding a customized WSO layer to the DenseNet, an
optimal window in the proximity of the emphysema window setting was learned
automatically, and a mean AUC of 0.82 [0.78, 0.86] was achieved. Detection of
COPD with DenseNet models was improved by WSO of CT data to the emphysema
window setting range. |
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DOI: | 10.48550/arxiv.2303.07189 |