Department of Otorhinolaryngology, University of Medicine and Pharmacy "Iuliu Hatieganu", Cluj Napoca, Romania.
Research Center for Functional Genomics, Biomedicine and Translational Medicine, "Iuliu Hatieganu" University of Medicine and Pharmacy, Cluj-Napoca, Romania.
Clin Otolaryngol. 2024 Nov;49(6):776-784. doi: 10.1111/coa.14208. Epub 2024 Aug 7.
Evaluating the possibility of predicting chronic rhinosinusitis with nasal polyps (CRSwNP) disease course using Artificial Intelligence.
We prospectively included patients undergoing first endoscopic sinus surgery (ESS) for nasal polyposis. Preoperative (demographic data, blood eosinophiles, endoscopy, Lund-Mackay, SNOT-22 and depression PHQ scores) and follow-up data was standardly collected. Outcome measures included SNOT-22, PHQ-9 and endoscopy perioperative sinus endoscopy (POSE) scores and two different microRNAs (miR-125b, miR-203a-3p) from polyp tissue. Based on POSE score, three labels were created (controlled: 0-7; partial control: 8-15; or relapse: 16-32). Patients were divided into train and test groups and using Random Forest, we developed algorithms for predicting ESS related outcomes.
Based on data collected from 85 patients, the proposed Machine Learning-approach predicted whether the patient would present control, partial control or relapse of nasal polyposis at 18 months following ESS. The algorithm predicted ESS outcomes with an accuracy between 69.23% (for non-invasive input parameters) and 84.62% (when microRNAs were also included). Additionally, miR-125b significantly improved the algorithm's accuracy and ranked as one of the most important algorithm variables.
We propose a Machine Learning algorithm which could change the prediction of disease course in CRSwNP.
评估使用人工智能预测慢性鼻-鼻窦炎伴鼻息肉(CRSwNP)病程的可能性。
我们前瞻性纳入了因鼻息肉行首次内镜鼻窦手术(ESS)的患者。标准收集术前(人口统计学数据、血嗜酸性粒细胞计数、内镜检查、Lund-Mackay、SNOT-22 和抑郁 PHQ 评分)和随访数据。主要结局评估包括 SNOT-22、PHQ-9 和内镜鼻窦术后内镜检查(POSE)评分,以及息肉组织中的两种不同的 microRNAs(miR-125b、miR-203a-3p)。根据 POSE 评分,创建了三个标签(控制:0-7;部分控制:8-15;或复发:16-32)。患者被分为训练组和测试组,并使用随机森林开发了预测 ESS 相关结局的算法。
基于 85 例患者的数据,所提出的机器学习方法预测了患者在 ESS 后 18 个月时是否会出现鼻息肉的控制、部分控制或复发。该算法对 ESS 结局的预测准确率在 69.23%(非侵入性输入参数)和 84.62%(同时纳入 microRNAs 时)之间。此外,miR-125b 显著提高了算法的准确性,并且是算法中最重要的变量之一。
我们提出了一种机器学习算法,该算法可能改变对 CRSwNP 病程的预测。