Wei Matthew, Hong Wei, Cao Ke, Loft Matthew, Gibbs Peter, Yeung Justin M
Department of Surgery, Western Precinct, University of Melbourne, Melbourne, Australia.
Department of Colorectal Surgery, Western Health, Melbourne, Australia.
ANZ J Surg. 2025 Jan-Feb;95(1-2):163-168. doi: 10.1111/ans.19312. Epub 2024 Nov 27.
Patient body composition (BC) has been shown to help predict clinical outcomes in rectal cancer patients. Artificial intelligence algorithms have allowed for easier acquisition of BC measurements, creating a comprehensive BC profile in patients using data from an entire three-dimensional (3D) region of the body. This study has utilized AI technology to measure BC from the entire lumbosacral (L1-S5) region and assessed the associations between BC and clinical outcomes in rectal cancer patients who have undergone neoadjuvant therapy followed by surgery.
A retrospective, cross sectional analysis was performed on locally advanced rectal cancer (LARC) patients treated with neoadjuvant long-course chemoradiotherapy followed by curative resection with total mesorectal excision at a tertiary referral centre, Western Health, Melbourne, Australia. A pre-trained and validated in-house AI segmentation model was used to automatically segment and measure intramuscular adipose tissue (IMAT), visceral adipose tissue (VAT), subcutaneous adipose tissue (SAT) and skeletal muscle (SM) from CT slices across the entire L1-S5 level of each patient. Multivariate analysis between patient BC and clinical outcomes was performed.
Two hundred and fourteen patients were included in the study. One hundred and fifty-one (70.6%) patients were male and 63 (29.4%) patients were female. The average age at diagnosis was 62.4 (±12.7) years. SM density, but not volume, was associated with better overall survival (OS) (HR 0.24, P = 0.029), recurrence-free survival (RFS) (HR 0.45, P = 0.048) and decreased length of stay (LoS) (HR 1.58, P = 0.036). Both IMAT volume (HR 0.13, P = 0.008) and density (HR 0.26, P = 0.006) were associated with better OS.
This study measured 3D BC from the entire lumbosacral region of rectal cancer patients. SM density was the most significant BC parameter, and was associated with improved OS, RFS and LoS. This adds to growing evidence that SM is a key component of BC in cancer patients and should be optimized prior to treatment. IMAT was also a prognostic factor, giving rise to avenues of future research into the role of adiposity on nutrition and tumour immunology.
患者身体成分(BC)已被证明有助于预测直肠癌患者的临床结局。人工智能算法使BC测量更容易获取,利用来自身体整个三维(3D)区域的数据为患者创建全面的BC概况。本研究利用人工智能技术测量整个腰骶部(L1-S5)区域的BC,并评估在接受新辅助治疗后进行手术的直肠癌患者中BC与临床结局之间的关联。
对在澳大利亚墨尔本西部医疗中心(Western Health)这个三级转诊中心接受新辅助长程放化疗后行根治性全直肠系膜切除术的局部晚期直肠癌(LARC)患者进行回顾性横断面分析。使用经过预训练和验证的内部人工智能分割模型,自动从每位患者整个L1-S5水平的CT切片中分割并测量肌内脂肪组织(IMAT)、内脏脂肪组织(VAT)、皮下脂肪组织(SAT)和骨骼肌(SM)。对患者BC与临床结局进行多变量分析。
214例患者纳入研究。151例(70.6%)为男性,63例(29.4%)为女性。诊断时的平均年龄为62.4(±12.7)岁。SM密度而非体积与更好的总生存期(OS)(风险比[HR]0.24,P = 0.029)、无复发生存期(RFS)(HR 0.45,P = 0.048)及住院时间缩短(LoS)(HR 1.58,P = 0.036)相关。IMAT体积(HR 0.13,P = 0.008)和密度(HR 0.26,P = 0.006)均与更好的OS相关。
本研究测量了直肠癌患者整个腰骶部区域的3D BC。SM密度是最重要的BC参数,与OS、RFS改善及LoS缩短相关。这进一步证明SM是癌症患者BC的关键组成部分,在治疗前应予以优化。IMAT也是一个预后因素,为未来研究肥胖在营养和肿瘤免疫学中的作用开辟了途径。