Artificial intelligence analysis of three-dimensional imaging data derives factors associated with postoperative recurrence in patients with radiologically solid-predominant small-sized lung cancers

Author:

Kudo Yujin1ORCID,Shimada Yoshihisa1,Matsubayashi Jun2,Kitamura Yoshiro3ORCID,Makino Yojiro1,Maehara Sachio1,Hagiwara Masaru1,Park Jinho4,Yamada Takafumi4,Takeuchi Susumu1ORCID,Kakihana Masatoshi1,Nagao Toshitaka2,Ohira Tatsuo1,Masumoto Jun5ORCID,Ikeda Norihiko1

Affiliation:

1. Department of Surgery, Tokyo Medical University, Tokyo, Japan

2. Department of Anatomic Pathology, Tokyo Medical University, Tokyo, Japan

3. Imaging Technology Center, FUJIFILM Corporation, Tokyo, Japan

4. Department of Radiology, Tokyo Medical University, Tokyo, Japan

5. Medical System Research & Development Center, FUJIFILM Corporation, Tokyo, Japan

Abstract

Abstract OBJECTIVES Indications of limited resection, such as segmentectomy, have recently been reported for patients with solid-predominant lung cancers ≤2 cm. This study aims to identify unfavourable prognostic factors using three-dimensional imaging analysis with artificial intelligence (AI) technology. METHODS A total of 157 patients who had clinical N0 non-small cell lung cancer with a radiological size ≤2 cm, and a consolidation tumour ratio > 0.5, who underwent anatomical lung resection between 2011 and 2017 were enrolled. To evaluate the three-dimensional structure, the ground-glass nodule/Solid Automatic Identification AI software Beta Version (AI software; Fujifilm Corporation, Japan) was used. RESULTS Maximum standardized uptake value (SUVmax) and solid-part volume measured by AI software (AI-SV) showed significant differences between the 139 patients with adenocarcinoma and the 18 patients with non-adenocarcinoma. Among the adenocarcinoma patients, 42 patients (30.2%) were found to be pathological upstaging. Multivariable analysis demonstrated that high SUVmax, high carcinoembryonic antigen level and high AI-SV were significant prognostic factors for recurrence-free survival (RFS; P < 0.05). The 5-year RFS was compared between patients with tumours showing high SUVmax and those showing low SUVmax (67.7% vs 95.4%, respectively, P < 0.001). The 5-year RFS was 91.0% in patients with small AI-SV and 68.1% in those with high AI-SV (P = 0.001). CONCLUSIONS High AI-SV, high SUVmax and abnormal carcinoembryonic antigen level were unfavourable prognostic factors of patients with solid-predominant lung adenocarcinoma with a radiological size ≤2 cm. Our results suggest that lobectomy should be preferred to segmentectomy for patients with these prognostic factors.

Funder

Department of Surgery, Tokyo Medical University from FUJIFILM Corporation

Publisher

Oxford University Press (OUP)

Subject

Cardiology and Cardiovascular Medicine,Pulmonary and Respiratory Medicine,General Medicine,Surgery

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