Rethinking feature reproducibility in radiomics: the elephant in the dark.

IF 3.6 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Aydin Demircioğlu
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引用次数: 0

Abstract

In radiomics, features are often linked to biomarkers and are generally expected to be reproducible, as reproducibility is considered a prerequisite for developing predictive models in clinical applications. However, this perspective overlooks feature interactions and may underestimate the potential value of nonreproducible features. Through experiments simulating a test-retest scenario, we demonstrate that even non-reproducible features can contribute significantly to predictive performance. Removing these features can lower model accuracy. These findings suggest that the emphasis on feature reproducibility should be reconsidered and that features should not be evaluated in isolation. Underlying information can be spread across multiple features. Focusing on individual features ignores feature interactions and may limit the model's predictive power. Ultimately, radiomics must prioritize prediction and clinical relevance. KEY POINTS: Feature reproducibility assessments often ignore feature interactions, overlooking predictive performance. Feature reproducibility depends on subjective thresholds, chosen metrics, and sample size. Nonreproducible features can be more predictive than reproducible ones. Predictive information may be distributed across multiple features rather than confined to individual ones.

Abstract Image

Abstract Image

Abstract Image

重新思考放射组学的特征再现性:黑暗中的大象。
在放射组学中,特征通常与生物标志物相关联,并且通常期望可重复性,因为可重复性被认为是在临床应用中开发预测模型的先决条件。然而,这种观点忽略了特征之间的相互作用,并且可能低估了不可复制特征的潜在价值。通过模拟测试-重测试场景的实验,我们证明即使是不可重复的特征也可以显著地促进预测性能。删除这些特征会降低模型的准确性。这些发现表明,应该重新考虑对特征再现性的重视,不应该孤立地评估特征。底层信息可以跨多个特性分布。专注于单个特征忽略了特征之间的相互作用,可能会限制模型的预测能力。最终,放射组学必须优先考虑预测和临床相关性。关键点:特征再现性评估经常忽略特征交互,忽略预测性能。特征再现性取决于主观阈值、选择的度量标准和样本量。不可复制的特征可能比可复制的特征更具预测性。预测信息可以分布在多个特征上,而不是局限于单个特征。
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来源期刊
European Radiology Experimental
European Radiology Experimental Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
6.70
自引率
2.60%
发文量
56
审稿时长
18 weeks
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