Preliminary study of automatic gastric cancer risk classification from photofluorography

To perform automatic gastric cancer risk classification using photofluorography for realizing effective mass screening as a preliminary study. We used data for 2100 subjects including X-ray images, pepsinogen I and II levels, PGI/PGII ratio, ( ) antibody, eradication history and interview sheets. We p...

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Veröffentlicht in:World journal of gastrointestinal oncology 2018-02, Vol.10 (2), p.62-70
Hauptverfasser: Togo, Ren, Ishihara, Kenta, Mabe, Katsuhiro, Oizumi, Harufumi, Ogawa, Takahiro, Kato, Mototsugu, Sakamoto, Naoya, Nakajima, Shigemi, Asaka, Masahiro, Haseyama, Miki
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Sprache:eng
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Zusammenfassung:To perform automatic gastric cancer risk classification using photofluorography for realizing effective mass screening as a preliminary study. We used data for 2100 subjects including X-ray images, pepsinogen I and II levels, PGI/PGII ratio, ( ) antibody, eradication history and interview sheets. We performed two-stage classification with our system. In the first stage, infection status classification was performed, and -infected subjects were automatically detected. In the second stage, we performed atrophic level classification to validate the effectiveness of our system. Sensitivity, specificity and Youden index (YI) of infection status classification were 0.884, 0.895 and 0.779, respectively, in the first stage. In the second stage, sensitivity, specificity and YI of atrophic level classification for -infected subjects were 0.777, 0.824 and 0.601, respectively. Although further improvements of the system are needed, experimental results indicated the effectiveness of machine learning techniques for estimation of gastric cancer risk.
ISSN:1948-5204
1948-5204
DOI:10.4251/wjgo.v10.i2.62