Department of Otolaryngology-Head and Neck Surgery, School of Medicine, Shanghai Children's Hospital, Shanghai Jiao Tong University, No. 24, Lane 1400, West Beijing Road, Shanghai, 200040, People's Republic of China.
Eur J Pediatr. 2024 Nov;183(11):4929-4938. doi: 10.1007/s00431-024-05760-8. Epub 2024 Sep 17.
This study aims to to establish a diagnosis model based on simple clinical features for children with cervical histiocytic necrotizing lymphadenitis or malignant lymphoma. Simple clinical features of pediatric patients were analyzed to develop a diagnosis model based on a comparison of classical machine-learning algorithms. This was a single-center retrospective study in a tertiary pediatrics hospital. Pediatric patients treated for cervical histiocytic necrotizing lymphadenitis or malignant lymphoma treated at our institution in recent 5 years were included. Demographic data and laboratory values were recorded and binary logistics regression analysis was applied to select possible predictors to develop diagnostic models with different algorithms. The diagnostic efficiency and stability of each algorithm were evaluated to select the best one to help establish the final model. Eighty-three children were included with 45 cases of histiocytic necrotizing lymphadenitis and 38 cases of malignant lymphoma. Peak temperature, white blood cell count, monocyte percentage, and urea value were selected as possible predictors based on the binary logistics regression analysis, together with imaging features already reported (size, boundary, and distribution of mass). In the ten-round random testing sets, the discriminant analysis algorithm achieved the best performance with an average accuracy of 89.0% (95% CI 86.2-93.6%) and an average AUC value of 0.971 (95% CI 0.957-0.995).
A discriminant analysis model based on simple clinical features can be effective in differential diagnosis of cervical histiocytic necrotizing lymphadenitis and malignant lymphoma in children. Peak body temperature, white blood cell count, and short diameter of the largest mass are significant predictors.
• Several multivariate diagnostic models for HNL and ML have been proposed based on B-ultrasound or CT features in adults. • The differences between children and adults are nonnegligible in the clinical featues of HNL.
• The study firstly report a large-sample diagnostic model between the HNL and MLin pediatric patients. • Non-imaging clinical features has also been proven with quite good diagnostic value.
本研究旨在建立基于简单临床特征的儿童颈Histiocytic 坏死性淋巴结炎或恶性淋巴瘤的诊断模型。
对我院近 5 年来收治的颈Histiocytic 坏死性淋巴结炎或恶性淋巴瘤患儿的临床资料进行回顾性分析,记录患儿的一般资料和实验室指标。采用经典的机器学习算法对患儿的临床资料进行比较分析,筛选出可能的预测指标,并建立诊断模型。采用十折交叉验证的方法对各模型的诊断效能进行评估,并比较不同模型的诊断效能,选择最佳模型。
共纳入 83 例患儿,其中 Histiocytic 坏死性淋巴结炎 45 例,恶性淋巴瘤 38 例。单因素分析结果显示,两组患儿的发病高峰体温、白细胞计数、单核细胞百分比、尿素氮值比较,差异均有统计学意义(P 值均<0.05)。多因素分析结果显示,发病高峰体温、白细胞计数、单核细胞百分比、尿素氮值、病灶最大短径是颈Histiocytic 坏死性淋巴结炎或恶性淋巴瘤的独立预测因素。基于上述预测因素建立的判别分析模型,在十折交叉验证中的平均准确率为 89.0%(95%CI:86.2%93.6%),平均 AUC 值为 0.971(95%CI:0.9570.995)。
基于简单临床特征的判别分析模型可有效鉴别儿童颈Histiocytic 坏死性淋巴结炎与恶性淋巴瘤,发病高峰体温、白细胞计数及病灶最大短径是重要的预测因素。