Prediction of tissue-of-origin of early stage cancers using serum miRNomes

Author:

Matsuzaki Juntaro12,Kato Ken3,Oono Kenta4,Tsuchiya Naoto5,Sudo Kazuki6ORCID,Shimomura Akihiko6ORCID,Tamura Kenji6,Shiino Sho7,Kinoshita Takayuki8,Daiko Hiroyuki9ORCID,Wada Takeyuki10,Katai Hitoshi10,Ochiai Hiroki11,Kanemitsu Yukihide11ORCID,Takamaru Hiroyuki12,Abe Seiichiro12ORCID,Saito Yutaka12,Boku Narikazu3ORCID,Kondo Shunsuke13ORCID,Ueno Hideki13,Okusaka Takuji13,Shimada Kazuaki14,Ohe Yuichiro15ORCID,Asakura Keisuke16,Yoshida Yukihiro16ORCID,Watanabe Shun-Ichi16,Asano Naofumi17,Kawai Akira17,Ohno Makoto18ORCID,Narita Yoshitaka18ORCID,Ishikawa Mitsuya19,Kato Tomoyasu19ORCID,Fujimoto Hiroyuki20,Niida Shumpei21,Sakamoto Hiromi22,Takizawa Satoko123,Akiba Takuya4,Okanohara Daisuke4,Shiraishi Kouya24,Kohno Takashi24ORCID,Takeshita Fumitaka25,Nakagama Hitoshi26,Ota Nobuyuki27,Ochiya Takahiro128,Hotta Tomomitsu,Nakagama Hitoshi,Ochiya Takahiro,Furuta Koh,Kato Ken,Ochiai Atsushi,Mitsunaga Shuichi,Niida Shumpei,Mimori Koshi,Hatada Izuho,Kuroda Masahiko,Yokota Takanori,Mori Masaki,Ishii Hideshi,Murakami Yoshiki,Tahara Hidetoshi,Baba Yoshinobu,Akio Kobori,Takizawa Satoko,Hashimoto Koji,Hirai Mitsuharu,Kobayashi Masahiko,Fujimiya Hitoshi,Okanohara Daisuke,Nakae Hiroki,Takashima Hideaki,

Affiliation:

1. Division of Molecular and Cellular Medicine, National Cancer Center Research Institute , Chuo-ku, Tokyo, Japan

2. Division of Pharmacotherapeutics, Keio University Faculty of Pharmacy , Minato-ku, Tokyo, Japan

3. Department of Head and Neck, Esophageal Medical Oncology and Department of Gastrointestinal Medical Oncology, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

4. Preferred Networks, Inc , Chiyoda-ku, Tokyo, Japan

5. Laboratory of Molecular Carcinogenesis, National Cancer Center Research Institute , Chuo-ku, Tokyo, Japan

6. Department of Breast and Medical Oncology, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

7. Department of Breast Surgery, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

8. Department of Breast Surgery, National Hospital Organization Tokyo Medical Center , Meguro-ku, Tokyo, Japan

9. Department of Esophageal Surgery, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

10. Department of Gastric Surgery, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

11. Department of Colorectal Surgery, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

12. Endoscopy Division, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

13. Department of Hepatobiliary and Pancreatic Oncology, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

14. Department of Hepatobiliary and Pancreatic Surgery, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

15. Department of Thoracic Oncology, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

16. Department of Thoracic Surgery, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

17. Department of Musculoskeletal Oncology, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

18. Department of Neurosurgery and Neuro-Oncology, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

19. Department of Gynecology, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

20. Department of Urology, National Cancer Center Hospital , Chuo-ku, Tokyo, Japan

21. Research Institute, National Center for Geriatrics and Gerontology , Obu, Aichi, Japan

22. Department of Biobank and Tissue Resources, Fundamental Innovative Oncology Core, National Cancer Center Research Institute , Chuo-ku, Tokyo, Japan

23. Toray Industries, Inc , Kamakura, Kanagawa, Japan

24. Division of Genome Biology, National Cancer Center Research Institute , Chuo-ku, Tokyo, Japan

25. Department of Translational Oncology, Fundamental Innovative Oncology Core, National Cancer Center Research Institute , Chuo-ku, Tokyo, Japan

26. National Cancer Center , Chuo-ku, Tokyo, Japan

27. Preferred Medicine, Inc , Burlingame, CA, USA

28. Department of Molecular and Cellular Medicine, Tokyo Medical University , Shinjuku-ku, Tokyo, Japan

Abstract

Abstract Background Noninvasive detection of early stage cancers with accurate prediction of tumor tissue-of-origin could improve patient prognosis. Because miRNA profiles differ between organs, circulating miRNomics represent a promising method for early detection of cancers, but this has not been shown conclusively. Methods A serum miRNA profile (miRNomes)–based classifier was evaluated for its ability to discriminate cancer types using advanced machine learning. The training set comprised 7931 serum samples from patients with 13 types of solid cancers and 5013 noncancer samples. The validation set consisted of 1990 cancer and 1256 noncancer samples. The contribution of each miRNA to the cancer-type classification was evaluated, and those with a high contribution were identified. Results Cancer type was predicted with an accuracy of 0.88 (95% confidence interval [CI] = 0.87 to 0.90) in all stages and an accuracy of 0.90 (95% CI = 0.88 to 0.91) in resectable stages (stages 0-II). The F1 score for the discrimination of the 13 cancer types was 0.93. Optimal classification performance was achieved with at least 100 miRNAs that contributed the strongest to accurate prediction of cancer type. Assessment of tissue expression patterns of these miRNAs suggested that miRNAs secreted from the tumor environment could be used to establish cancer type–specific serum miRNomes. Conclusions This study demonstrates that large-scale serum miRNomics in combination with machine learning could lead to the development of a blood-based cancer classification system. Further investigations of the regulating mechanisms of the miRNAs that contributed strongly to accurate prediction of cancer type could pave the way for the clinical use of circulating miRNA diagnostics.

Funder

Japan Agency for Medical Research and Development

National Cancer Center Research and Development Fund

National Cancer Center Biobank

Publisher

Oxford University Press (OUP)

Subject

Cancer Research,Oncology

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