免疫组织化学
ATRX公司
平滑肌肉瘤
恶性肿瘤
病理
平滑肌瘤
算法
生物
死亡相关蛋白6
肉瘤
医学
计算机科学
基因
遗传学
核蛋白
转录因子
突变
作者
Catarina Alves‐Vale,Nathalène Truffaux,Valérie Vélasco,Rihab Azmani,Melissa Alamé,Flora Rebier,Laétitia Mayeur,Yanick Leger,Isabelle Hostein,Isabelle Soubeyran,Larry Blanchard,Estelle Marion,Quitterie Fontanges,François Le Loarer,Gerlinde Avérous,Catherine Genestie,Laurent Arnould,Mojgan Devouassoux‐Shisheboran,Sabrina Croce
摘要
Aims Leiomyomas (LM) are the most common uterine mesenchymal neoplasms and encompass a variety of histological subtypes. Bizarre nuclei are described in both leiomyomas with bizarre nuclei (LM‐BN) and fumarate hydratase‐deficient leiomyomas (FH‐LM), which raise diagnostic concerns regarding leiomyosarcoma (LMS). Recently, an immunohistochemical algorithm to support the diagnosis of LMS based on the genomic landscape of these neoplasms was proposed. This study aimed to evaluate the algorithm's accuracy in distinguishing LM‐BN and FH‐LM from LMS. Methods and Results We collected 68 LM (29 LM‐BN, 30 FH‐LM, and 9 LM) and 9 LMS, along with clinicopathological and molecular data. An immunohistochemical panel comprising p53, Rb, PTEN, ATRX, DAXX, and MDM2 was applied. Nine cases were non‐interpretable due to fixation issues. The algorithm demonstrated 100% accuracy for LM without bizarre nuclei (9/9) and for nonmyxoid LMS (5/5). Notably, 28.6% (14/49) of LM‐BN and FH‐LM exhibited at least two abnormalities, leading to potential misclassification as LMS. However, their clinical course, morphology, and genomic profile supported a benign diagnosis. Frequent alterations included Rb (20/49; 40.8%) and p53 (19/49; 38.8%), particularly in bizarre cells, while no abnormal staining was observed for ATRX, DAXX, or MDM2. Conclusion The proposed algorithm has limitations in differentiating LMS from LM‐BN and FH‐LM, misclassifying 28.6% of the latter. Accurate interpretation requires proper internal controls, particularly for markers whose loss of expression favours malignancy. Morphology remains central for diagnosis, although integration of molecular data may provide additional insights for a definitive classification in challenging cases.
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