Impact of chest radiograph image size and augmentation on estimating pulmonary artery wedge pressure by regression convolutional neural network

Yuto Omae, Yuki Saito, Daisuke Fukamachi, Koichi Nagashima, Yasuo Okumura, Jun Toyotani

研究成果: ジャーナルへの寄稿会議記事査読

抄録

Heart failure is related to pulmonary artery wedge pressure (PAWP), which is one of the measurements for diagnosing heart disease. In the case of suspected heart failure, it is desirable to measure PAWP by right heart catheterization (RHC). However, RHC is an invasive procedure accompanied with the risk of complication. Therefore, a method to quantitatively estimate PAWP from chest radiographs by a regression convolutional neural network (R-CNN) was proposed as the previous study. The risk of complication is eliminated because the method is non-invasive. Moreover, developed R-CNN includes regression activation map (RAM), which is one of the white-box techniques for CNN. However, tuning hyper parameters of R-CNN (e.g., input image size and data augmentation) developed in previous researches, is insufficient. Therefore, we carry out sensitivity analyses of input image sizes and data augmentation against estimating PAWP from chest radiographs. Through these analyses, we found the appropriate input image size and data augmentation.

本文言語英語
論文番号120065-1
ジャーナルAIP Conference Proceedings
2872
1
DOI
出版ステータス出版済み - 2023
イベント11th International Conference on Mathematical Modeling in Physical Sciences, IC-MSQUARE 2022 - Virtual, Online, セルビア
継続期間: 5 9月 20228 9月 2022

フィンガープリント

「Impact of chest radiograph image size and augmentation on estimating pulmonary artery wedge pressure by regression convolutional neural network」の研究トピックを掘り下げます。これらがまとまってユニークなフィンガープリントを構成します。

引用スタイル