Reitsam Nic G, Grosser Bianca, Steiner David F, Grozdanov Veselin, Wulczyn Ellery, L'Imperio Vincenzo, Plass Markus, Müller Heimo, Zatloukal Kurt, Muti Hannah S, Kather Jakob N, Märkl Bruno
Pathology, Medical Faculty, University of Augsburg, Augsburg, Germany.
Bavarian Cancer Research Center (BZKF), Augsburg, Germany.
Commun Med (Lond). 2024 Aug 15;4(1):163. doi: 10.1038/s43856-024-00589-6.
Tumor-Adipose-Feature (TAF) as well as SARIFA (Stroma AReactive Invasion Front Areas) are two histologic features/biomarkers linking tumor-associated adipocytes to poor outcomes in colorectal cancer (CRC) patients. Whereas TAF was identified by deep learning (DL) algorithms, SARIFA was established as a human-observed histopathologic biomarker.
To study the overlap between TAF and SARIFA, we performed a systematic pathological review of TAF based on all published image tiles. Additionally, we analyzed the presence/absence of TAF in SARIFA-negative CRC cases to elucidate the biologic and prognostic role of a direct tumor-adipocyte contact. TCGA-CRC gene expression data is investigated to assess the association of FABP4 (fatty-acid binding protein 4) and CD36 (fatty-acid translocase) with both TAF and CRC prognosis.
By investigating the TAF/SARIFA overlap, we show that many TAF patches correspond to the recently described SARIFA-phenomenon. Even though there is a pronounced morphological and biological overlap, there are differences in the concepts. The presence of TAF in SARIFA-negative CRCs is not associated with poor outcomes in this cohort, potentially highlighting the importance of a direct tumor-adipocyte interaction. Upregulation of FABP4 and CD36 gene expression seem both linked to a poor prognosis in CRC.
By proving the substantial overlap between human-observed SARIFA and DL-based TAF as morphologic biomarkers, we demonstrate that linking DL-based image features to independently developed histopathologic biomarkers is a promising tool in the identification of clinically and biologically meaningful biomarkers. Adipocyte-tumor-cell interactions seem to be crucial in CRC, which should be considered as biomarkers for further investigations.
肿瘤-脂肪特征(TAF)以及基质反应性侵袭前沿区域(SARIFA)是将肿瘤相关脂肪细胞与结直肠癌(CRC)患者不良预后相关联的两种组织学特征/生物标志物。TAF是通过深度学习(DL)算法识别的,而SARIFA是作为一种人工观察的组织病理学标志物建立的。
为了研究TAF和SARIFA之间的重叠情况,我们基于所有已发表的图像切片对TAF进行了系统的病理学回顾。此外,我们分析了SARIFA阴性的CRC病例中TAF的存在与否,以阐明直接的肿瘤-脂肪细胞接触的生物学和预后作用。研究了TCGA-CRC基因表达数据,以评估脂肪酸结合蛋白4(FABP4)和脂肪酸转运蛋白(CD36)与TAF和CRC预后的关联。
通过研究TAF/SARIFA重叠情况,我们发现许多TAF斑块与最近描述的SARIFA现象相对应。尽管存在明显的形态学和生物学重叠,但在概念上存在差异。在该队列中,SARIFA阴性的CRC中TAF的存在与不良预后无关,这可能突出了直接的肿瘤-脂肪细胞相互作用的重要性。FABP4和CD36基因表达的上调似乎都与CRC的不良预后相关。
通过证明人工观察的SARIFA和基于DL的TAF作为形态学生物标志物之间存在大量重叠,我们表明将基于DL的图像特征与独立开发的组织病理学标志物相联系是识别具有临床和生物学意义的生物标志物的一种有前景的工具。脂肪细胞-肿瘤细胞相互作用在CRC中似乎至关重要,应将其视为进一步研究的生物标志物。