A Prediction Model to Discriminate Small Choroidal Melanoma from Choroidal Nevus.

Pub Date : 2022-02-01 DOI:10.1159/000521541
Emily C Zabor, Vishal Raval, Shiming Luo, David E Pelayes, Arun D Singh
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引用次数: 6

Abstract

Objective: This study aimed to develop a validated machine learning model to diagnose small choroidal melanoma.

Design: This is a cohort study.

Subjects participants and/or controls: The training data included 123 patients diagnosed as small choroidal melanocytic tumor (5.0-16.0 mm in largest basal diameter and 1.0 mm-2.5 mm in height; Collaborative Ocular Melanoma Study criteria). Those diagnosed as melanoma (n = 61) had either documented growth or pathologic confirmation. Sixty-two patients with stable lesions classified as choroidal nevus were used as negative controls. The external validation dataset included 240 patients managed at a different tertiary clinic, also with small choroidal melanocytic tumor, observed for malignant growth.

Methods: In the training data, lasso logistic regression was used to select variables for inclusion in the final model for the association with melanoma versus choroidal nevus. Internal and external validation was performed to assess model performance.

Main outcome measures: The main outcome measure is the predicted probability of small choroidal melanoma.

Results: Distance to optic disc ≥3 mm and drusen were associated with decreased odds of melanoma, whereas male versus female sex, increased height, subretinal fluid, and orange pigment were associated with increased odds of choroidal melanoma. The area under the receiver operating characteristic "discrimination value" for this model was 0.880. The top four variables that were most frequently selected for inclusion in the model on internal validation, implying their importance as predictors of melanoma, were subretinal fluid, height, distance to optic disc, and orange pigment. When tested against the validation data, the prediction model could distinguish between choroidal nevus and melanoma with a high discrimination of 0.861. The final prediction model was converted into an online calculator to generate predicted probability of melanoma.

Conclusions: To minimize diagnostic uncertainty, a machine learning-based diagnostic prediction calculator can be readily applied for decision-making and counseling patients with small choroidal melanoma.

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小脉络膜黑色素瘤与脉络膜痣的预测模型。
目的:本研究旨在建立一种有效的机器学习模型来诊断小脉络膜黑色素瘤。设计:这是一项队列研究。受试者、受试者和/或对照组:训练数据包括123例诊断为小脉膜黑素细胞瘤的患者(最大基底直径5.0-16.0 mm,高度1.0 mm-2.5 mm;协同眼黑色素瘤研究标准)。那些被诊断为黑色素瘤的患者(n = 61)要么有生长记录,要么有病理证实。62例稳定病变归为脉络膜痣的患者作为阴性对照。外部验证数据集包括240名在不同三级诊所管理的患者,同样患有小脉络膜黑素细胞瘤,观察到恶性生长。方法:在训练数据中,使用套索逻辑回归选择变量,以纳入最终模型,以确定黑色素瘤与脉络膜痣的关系。进行内部和外部验证以评估模型的性能。主要结局指标:主要结局指标为小脉络膜黑色素瘤的预测概率。结果:视盘距离≥3mm和颜色与黑色素瘤的发病率降低相关,而男性与女性、身高增加、视网膜下积液和橙色色素与脉络膜黑色素瘤的发病率增加相关。该模型的接收机工作特征“判别值”下面积为0.880。在内部验证中,最常被选择纳入模型的前四个变量是视网膜下液、高度、到视盘的距离和橙色色素,这意味着它们作为黑色素瘤预测因子的重要性。对验证数据进行检验,预测模型能够区分脉络膜痣和黑色素瘤,判别率为0.861。最后将预测模型转换成在线计算器生成黑色素瘤的预测概率。结论:为了减少诊断的不确定性,基于机器学习的诊断预测计算器可以很容易地应用于小脉络膜黑色素瘤患者的决策和咨询。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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