Dipartimento di Scienze Mediche Internistiche, Centro Trapianti Midollo Osseo, Università di Cagliari, Cagliari, Italy.
Exp Hematol. 2010 May;38(5):426-33. doi: 10.1016/j.exphem.2010.02.012. Epub 2010 Mar 4.
There is growing interest in the development of prognostic models for predicting the occurrence of acute graft-vs-host disease (aGVHD) after unrelated donor hematopoietic stem cell transplantation. A high number of variables have been shown to play a role in aGVHD, but the search for a predictive algorithm is still ongoing. Artificial neural networks (ANNs) represent an attractive alternative to multivariate analysis for clinical prognosis. So far, no reports have investigated the ability of ANNs in predicting HSCT outcome.
We compared the prognostic performance of ANNs with that of logistic regression (LR) in 78 beta-thalassemia major patients given unrelated donor hematopoietic stem cell transplantation. Twenty-four independent variables were analyzed for their potential impact on outcomes.
Twenty-six patients (33.3%) developed grade II to IV aGVHD. In multivariate analysis, homozygosity for donor KIR haplotype A (p = 0.03), donor age (p = 0.05), and donor homozygosity for the deletion of the human leukocyte antigen-G 14-bp polymorphism (p = 0.05) were independently significantly correlated to aGVHD. The mean sensitivity of LR and ANNs (capability of predicting aGVHD in patients who developed aGVHD) in test datasets was 21.7% and 83.3%, respectively (p < 0.001); the mean specificity (capability of predicting absence of aGVHD in patients who did not develop aGVHD) was 80.5% and 90.1%, respectively (p = NS).
Although ANNs are unable to calculate the weight of single variables on outcomes, they were found to have a better performance than LR. A combination of these two methods could be more efficient in predicting outcomes and help tailor GVHD prophylaxis regimens according to the predicted risk of each patient. Whether ANN technology will provide better predictive performance when applied to other datasets remains to be confirmed.
人们对开发预测无关供者造血干细胞移植后急性移植物抗宿主病(aGVHD)发生的预后模型越来越感兴趣。大量变量已被证明在 aGVHD 中起作用,但仍在寻找预测算法。人工神经网络(ANNs)是一种有吸引力的替代方法,可以用于临床预后的多变量分析。到目前为止,尚无报道研究 ANN 在预测 HSCT 结果方面的能力。
我们比较了人工神经网络与逻辑回归(LR)在 78 例接受无关供者造血干细胞移植的β-地中海贫血患者中的预后性能。分析了 24 个独立变量对结果的潜在影响。
26 例(33.3%)患者发生 II 至 IV 级 aGVHD。多变量分析显示,供体 KIR 单倍型 A 纯合性(p=0.03)、供体年龄(p=0.05)和供体 HLA-G 14bp 缺失多态性纯合性(p=0.05)与 aGVHD 独立相关。在测试数据集中,LR 和 ANNs 的平均敏感性(预测发生 aGVHD 的患者中 aGVHD 的能力)分别为 21.7%和 83.3%(p<0.001);平均特异性(预测未发生 aGVHD 的患者中不存在 aGVHD 的能力)分别为 80.5%和 90.1%(p=NS)。
尽管 ANNs 无法计算单个变量对结果的权重,但它们的性能优于 LR。这两种方法的结合可以更有效地预测结果,并根据每个患者预测的风险调整 GVHD 预防方案。ANN 技术在应用于其他数据集时是否会提供更好的预测性能仍有待证实。