Can we predict pathology without surgery? Weighing the added value of multiparametric MRI and whole prostate radiomics in integrative machine learning models.

IF 4.7 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING European Radiology Pub Date : 2024-10-01 Epub Date: 2024-03-20 DOI:10.1007/s00330-024-10699-3
Giulia Marvaso, Lars Johannes Isaksson, Mattia Zaffaroni, Maria Giulia Vincini, Paul Eugene Summers, Matteo Pepa, Giulia Corrao, Giovanni Carlo Mazzola, Marco Rotondi, Federico Mastroleo, Sara Raimondi, Sarah Alessi, Paola Pricolo, Stefano Luzzago, Francesco Alessandro Mistretta, Matteo Ferro, Federica Cattani, Francesco Ceci, Gennaro Musi, Ottavio De Cobelli, Marta Cremonesi, Sara Gandini, Davide La Torre, Roberto Orecchia, Giuseppe Petralia, Barbara Alicja Jereczek-Fossa
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Abstract

Objective: To test the ability of high-performance machine learning (ML) models employing clinical, radiological, and radiomic variables to improve non-invasive prediction of the pathological status of prostate cancer (PCa) in a large, single-institution cohort.

Methods: Patients who underwent multiparametric MRI and prostatectomy in our institution in 2015-2018 were considered; a total of 949 patients were included. Gradient-boosted decision tree models were separately trained using clinical features alone and in combination with radiological reporting and/or prostate radiomic features to predict pathological T, pathological N, ISUP score, and their change from preclinical assessment. Model behavior was analyzed in terms of performance, feature importance, Shapley additive explanation (SHAP) values, and mean absolute error (MAE). The best model was compared against a naïve model mimicking clinical workflow.

Results: The model including all variables was the best performing (AUC values ranging from 0.73 to 0.96 for the six endpoints). Radiomic features brought a small yet measurable boost in performance, with the SHAP values indicating that their contribution can be critical to successful prediction of endpoints for individual patients. MAEs were lower for low-risk patients, suggesting that the models find them easier to classify. The best model outperformed (p ≤ 0.0001) clinical baseline, resulting in significantly fewer false negative predictions and overall was less prone to under-staging.

Conclusions: Our results highlight the potential benefit of integrative ML models for pathological status prediction in PCa. Additional studies regarding clinical integration of such models can provide valuable information for personalizing therapy offering a tool to improve non-invasive prediction of pathological status.

Clinical relevance statement: The best machine learning model was less prone to under-staging of the disease. The improved accuracy of our pathological prediction models could constitute an asset to the clinical workflow by providing clinicians with accurate pathological predictions prior to treatment.

Key points: • Currently, the most common strategies for pre-surgical stratification of prostate cancer (PCa) patients have shown to have suboptimal performances. • The addition of radiological features to the clinical features gave a considerable boost in model performance. Our best model outperforms the naïve model, avoiding under-staging and resulting in a critical advantage in the clinic. •Machine learning models incorporating clinical, radiological, and radiomics features significantly improved accuracy of pathological prediction in prostate cancer, possibly constituting an asset to the clinical workflow.

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无需手术就能预测病理结果吗?在综合机器学习模型中权衡多参数磁共振成像和整个前列腺放射组学的附加值。
目的在一个大型单一机构队列中,测试采用临床、放射学和放射学变量的高性能机器学习(ML)模型改善前列腺癌(PCa)病理状态无创预测的能力:考虑2015-2018年在我院接受多参数磁共振成像和前列腺切除术的患者,共纳入949名患者。分别使用临床特征和结合放射学报告和/或前列腺放射学特征训练梯度提升决策树模型,以预测病理T、病理N、ISUP评分及其与临床前评估相比的变化。从性能、特征重要性、夏普利加法解释(SHAP)值和平均绝对误差(MAE)等方面对模型行为进行了分析。最佳模型与模拟临床工作流程的天真模型进行了比较:结果:包含所有变量的模型表现最佳(六个终点的 AUC 值从 0.73 到 0.96 不等)。放射组学特征对性能的提升虽小,但效果明显,其SHAP值表明,放射组学特征对成功预测单个患者的终点至关重要。低风险患者的 MAE 值较低,这表明模型更容易对他们进行分类。最佳模型的表现优于(P≤0.0001)临床基线,导致假阴性预测显著减少,总体上不易出现分期不足的情况:我们的研究结果凸显了综合 ML 模型在预测 PCa 病理状态方面的潜在优势。有关此类模型临床整合的其他研究可为个性化治疗提供有价值的信息,为改善病理状态的非侵入性预测提供工具:最佳机器学习模型不易出现疾病分期不足的情况。我们的病理预测模型准确性的提高可以为临床医生在治疗前提供准确的病理预测,从而成为临床工作流程中的一项资产:- 要点:目前,对前列腺癌(PCa)患者进行手术前分层的最常见策略效果并不理想。- 在临床特征基础上增加放射学特征可显著提高模型性能。我们的最佳模型优于天真模型,避免了分期不足,从而在临床中取得了关键优势。-结合临床、放射学和放射组学特征的机器学习模型显著提高了前列腺癌病理预测的准确性,可能成为临床工作流程中的一项资产。
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来源期刊
European Radiology
European Radiology 医学-核医学
CiteScore
11.60
自引率
8.50%
发文量
874
审稿时长
2-4 weeks
期刊介绍: European Radiology (ER) continuously updates scientific knowledge in radiology by publication of strong original articles and state-of-the-art reviews written by leading radiologists. A well balanced combination of review articles, original papers, short communications from European radiological congresses and information on society matters makes ER an indispensable source for current information in this field. This is the Journal of the European Society of Radiology, and the official journal of a number of societies. From 2004-2008 supplements to European Radiology were published under its companion, European Radiology Supplements, ISSN 1613-3749.
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