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Demarcation Line Determination for Diagnosis of Gastric Cancer Disease Range Using Unsupervised Machine Learning in Magnifying Narrow-Band Imaging.
Okumura, Shunsuke; Goudo, Misa; Hiwa, Satoru; Yasuda, Takeshi; Kitae, Hiroaki; Yasuda, Yuriko; Tomie, Akira; Omatsu, Tatsushi; Ichikawa, Hiroshi; Yagi, Nobuaki; Hiroyasu, Tomoyuki.
Afiliação
  • Okumura S; Graduate School of Life and Medical Sciences, Doshisha University, Kyoto 610-0394, Japan.
  • Goudo M; Graduate School of Life and Medical Sciences, Doshisha University, Kyoto 610-0394, Japan.
  • Hiwa S; Department of Biomedical Sciences and Informatics, Doshisha University, Kyoto 610-0394, Japan.
  • Yasuda T; Department of Gastroenterology, Asahi University Hospital, Gifu 500-8523, Japan.
  • Kitae H; Department of Gastroenterology, Asahi University Hospital, Gifu 500-8523, Japan.
  • Yasuda Y; Department of Gastroenterology, Asahi University Hospital, Gifu 500-8523, Japan.
  • Tomie A; Department of Gastroenterology, Asahi University Hospital, Gifu 500-8523, Japan.
  • Omatsu T; Department of Gastroenterology, Asahi University Hospital, Gifu 500-8523, Japan.
  • Ichikawa H; Department of Medical Life Systems, Doshisha University, Kyoto 610-0394, Japan.
  • Yagi N; Department of Gastroenterology, Asahi University Hospital, Gifu 500-8523, Japan.
  • Hiroyasu T; Department of Biomedical Sciences and Informatics, Doshisha University, Kyoto 610-0394, Japan.
Diagnostics (Basel) ; 12(10)2022 Oct 14.
Article em En | MEDLINE | ID: mdl-36292179
ABSTRACT
BACKGROUND AND

AIMS:

It is important to determine an accurate demarcation line (DL) between the cancerous lesions and background mucosa in magnifying narrow-band imaging (M-NBI)-based diagnosis. However, it is difficult for novice endoscopists. We aimed to automatically determine the accurate DL using a machine learning method.

METHODS:

We used an unsupervised machine learning approach to determine the DLs. Our method consists of the following four

steps:

(1) an M-NBI image is segmented into superpixels using simple linear iterative clustering; (2) the image features are extracted for each superpixel; (3) the superpixels are grouped into several clusters using the k-means method; and (4) the boundaries of the clusters are extracted as DL candidates. The 23 M-NBI images of 11 cases were used for performance evaluation. The evaluation investigated the similarity of the DLs identified by endoscopists and our method, and the Euclidean distance between the two DLs was calculated. For the single case of 11 cases, the histopathological examination was also conducted to evaluate the proposed system.

RESULTS:

The average Euclidean distances for the 11 cases were 10.65, 11.97, 7.82, 8.46, 8.59, 9.72, 12.20, 9.06, 22.86, 8.45, and 25.36. The results indicated that the proposed method could identify similar DLs to those identified by experienced doctors. Additionally, it was confirmed that the proposed system could generate pathologically valid DLs by increasing the number of clusters.

CONCLUSIONS:

Our proposed system can support the training of inexperienced doctors as well as enrich the knowledge of experienced doctors in endoscopy.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies Idioma: En Revista: Diagnostics (Basel) Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Diagnostic_studies Idioma: En Revista: Diagnostics (Basel) Ano de publicação: 2022 Tipo de documento: Article