医学
食管癌
癌症
内科学
接收机工作特性
回顾性队列研究
食管切除术
外科肿瘤学
切断
体质指数
肿瘤科
外科
物理
量子力学
作者
Tomohiro Ikeda,Kazuhiro Noma,Masanori Konuma,Naoaki Maeda,Shunsuke Tanabe,Takayoshi Kawabata,Masashi Kanai,Michiaki Hamada,Toshiyoshi Fujiwara,Toshifumi Ozaki
出处
期刊:Esophagus
[Springer Science+Business Media]
日期:2025-02-04
标识
DOI:10.1007/s10388-025-01108-9
摘要
Abstract Background Physical activity has the potential to promote tumor regression in patients with esophageal cancer receiving neoadjuvant chemotherapy (NAC); however, the benefits of light-intensity physical activity (LIPA) are unclear. This study aimed to investigate the impact of LIPA on tumor regression in male patients with esophageal cancer during NAC and its optimal cutoff value. Methods This retrospective single-center observational study included all male patients who underwent NAC or curative esophagectomy. We assessed the physical activity of patients using an accelerometer and calculated the time spent on LIPA. Tumor regression was defined as grade ≥ 1b according to the Japanese classification of esophageal cancer. The impact of LIPA on tumor regression was analyzed using multivariate analysis, and the optimal cutoff value was identified using the receiver operating characteristic curve. Results Sixty-nine male patients with esophageal cancer who underwent NAC were analyzed. The mean age was 68 years, mean body mass index was 22.4, and 80% of the patients were diagnosed with clinical stage 3 or 4 disease. Every extra 30-min increase in LIPA during the treatment phase was associated with tumor regression (adjusted OR 1.41 [1.02–2.04]). The optimal cutoff value of LIPA was 156.11 min/day, and patients with rich LIPA (≥ 156.11 min/day) were less likely to suffer from anorexia and malnutrition during NAC. Conclusion This study demonstrated that LIPA during NAC has a potential of promoting tumor regression with a cutoff value of 156.5 min/day. Further clinical research is required to determine the prognostic benefits of LIPA in patients receiving NAC.
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