TY - JOUR
T1 - Machine learning-based model for prediction and feature analysis of recurrence in pancreatic neuroendocrine tumors G1/G2
AU - Murakami, Masatoshi
AU - Fujimori, Nao
AU - Nakata, Kohei
AU - Nakamura, Masafumi
AU - Hashimoto, Shinichi
AU - Kurahara, Hiroshi
AU - Nishihara, Kazuyoshi
AU - Abe, Toshiya
AU - Hashigo, Shunpei
AU - Kugiyama, Naotaka
AU - Ozawa, Eisuke
AU - Okamoto, Kazuhisa
AU - Ishida, Yusuke
AU - Okano, Keiichi
AU - Takaki, Ryo
AU - Shimamatsu, Yutaka
AU - Ito, Tetsuhide
AU - Miki, Masami
AU - Oza, Noriko
AU - Yamaguchi, Daisuke
AU - Yamamoto, Hirofumi
AU - Takedomi, Hironobu
AU - Kawabe, Ken
AU - Akashi, Tetsuro
AU - Miyahara, Koichi
AU - Ohuchida, Jiro
AU - Ogura, Yasuhiro
AU - Nakashima, Yohei
AU - Ueki, Toshiharu
AU - Ishigami, Kousei
AU - Umakoshi, Hironobu
AU - Ueda, Keijiro
AU - Oono, Takamasa
AU - Ogawa, Yoshihiro
N1 - Publisher Copyright:
© 2023, Japanese Society of Gastroenterology.
PY - 2023/6
Y1 - 2023/6
N2 - Background: Pancreatic neuroendocrine neoplasms (PanNENs) are a heterogeneous group of tumors. Although the prognosis of resected PanNENs is generally considered to be good, a relatively high recurrence rate has been reported. Given the scarcity of large-scale reports about PanNEN recurrence due to their rarity, we aimed to identify the predictors for recurrence in patients with resected PanNENs to improve prognosis. Methods: We established a multicenter database of 573 patients with PanNENs, who underwent resection between January 1987 and July 2020 at 22 Japanese centers, mainly in the Kyushu region. We evaluated the clinical characteristics of 371 patients with localized non-functioning pancreatic neuroendocrine tumors (G1/G2). We also constructed a machine learning-based prediction model to analyze the important features to determine recurrence. Results: Fifty-two patients experienced recurrence (14.0%) during the follow-up period, with the median time of recurrence being 33.7 months. The random survival forest (RSF) model showed better predictive performance than the Cox proportional hazards regression model in terms of the Harrell’s C-index (0.841 vs. 0.820). The Ki-67 index, residual tumor, WHO grade, tumor size, and lymph node metastasis were the top five predictors in the RSF model; tumor size above 20 mm was the watershed with increased recurrence probability, whereas the 5-year disease-free survival rate decreased linearly as the Ki-67 index increased. Conclusions: Our study revealed the characteristics of resected PanNENs in real-world clinical practice. Machine learning techniques can be powerful analytical tools that provide new insights into the relationship between the Ki-67 index or tumor size and recurrence.
AB - Background: Pancreatic neuroendocrine neoplasms (PanNENs) are a heterogeneous group of tumors. Although the prognosis of resected PanNENs is generally considered to be good, a relatively high recurrence rate has been reported. Given the scarcity of large-scale reports about PanNEN recurrence due to their rarity, we aimed to identify the predictors for recurrence in patients with resected PanNENs to improve prognosis. Methods: We established a multicenter database of 573 patients with PanNENs, who underwent resection between January 1987 and July 2020 at 22 Japanese centers, mainly in the Kyushu region. We evaluated the clinical characteristics of 371 patients with localized non-functioning pancreatic neuroendocrine tumors (G1/G2). We also constructed a machine learning-based prediction model to analyze the important features to determine recurrence. Results: Fifty-two patients experienced recurrence (14.0%) during the follow-up period, with the median time of recurrence being 33.7 months. The random survival forest (RSF) model showed better predictive performance than the Cox proportional hazards regression model in terms of the Harrell’s C-index (0.841 vs. 0.820). The Ki-67 index, residual tumor, WHO grade, tumor size, and lymph node metastasis were the top five predictors in the RSF model; tumor size above 20 mm was the watershed with increased recurrence probability, whereas the 5-year disease-free survival rate decreased linearly as the Ki-67 index increased. Conclusions: Our study revealed the characteristics of resected PanNENs in real-world clinical practice. Machine learning techniques can be powerful analytical tools that provide new insights into the relationship between the Ki-67 index or tumor size and recurrence.
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U2 - 10.1007/s00535-023-01987-8
DO - 10.1007/s00535-023-01987-8
M3 - Article
C2 - 37099152
AN - SCOPUS:85153503588
SN - 0944-1174
VL - 58
SP - 586
EP - 597
JO - Journal of gastroenterology
JF - Journal of gastroenterology
IS - 6
ER -