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首页> 外文期刊>Proteome science >Serum profiling by MALDI-TOF mass spectrometry as a diagnostic tool for domoic acid toxicosis in California sea lions
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Serum profiling by MALDI-TOF mass spectrometry as a diagnostic tool for domoic acid toxicosis in California sea lions

机译:通过MALDI-TOF质谱进行血清分析作为加利福尼亚海狮中Domoic酸中毒的诊断工具

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摘要

Background There are currently no reliable markers of acute domoic acid toxicosis (DAT) for California sea lions. We investigated whether patterns of serum peptides could diagnose acute DAT. Serum peptides were analyzed by MALDI-TOF mass spectrometry from 107 sea lions (acute DAT n = 34; non-DAT n = 73). Artificial neural networks (ANN) were trained using MALDI-TOF data. Individual peaks and neural networks were qualified using an independent test set (n = 20). Results No single peak was a good classifier of acute DAT, and ANN models were the best predictors of acute DAT. Performance measures for a single median ANN were: sensitivity, 100%; specificity, 60%; positive predictive value, 71%; negative predictive value, 100%. When 101 ANNs were combined and allowed to vote for the outcome, the performance measures were: sensitivity, 30%; specificity, 100%; positive predictive value, 100%; negative predictive value, 59%. Conclusions These results suggest that MALDI-TOF peptide profiling and neural networks can perform either as a highly sensitive (100% negative predictive value) or a highly specific (100% positive predictive value) diagnostic tool for acute DAT. This also suggests that machine learning directed by populations of predictive models offer the ability to modulate the predictive effort into a specific type of error.
机译:背景技术目前,尚无加利福尼亚海狮急性多摩酸中毒(DAT)的可靠标志。我们调查了血清肽模式是否可以诊断急性DAT。通过MALDI-TOF质谱法分析了107只海狮的血清多肽(急性DAT n = 34;非DAT n = 73)。人工神经网络(ANN)使用MALDI-TOF数据进行了训练。使用独立的测试集(n = 20)对单个峰和神经网络进行鉴定。结果没有一个峰是急性DAT的良好分类器,而ANN模型是急性DAT的最佳预测指标。单个中位人工神经网络的绩效指标为:敏感性,100%;特异性为60%;阳性预测值,71%;阴性预测值100%。当将101个人工神经网络合并并允许对结果进行投票时,绩效指标为:敏感性,30%;特异性100%;阳性预测值,100%;阴性预测值为59%。结论这些结果表明,MALDI-TOF肽谱分析和神经网络可以作为急性DAT的高度敏感(100%阴性预测值)或高度特异性(100%阳性预测值)诊断工具。这也表明,由预测模型总体指导的机器学习提供了将预测工作调整为特定类型错误的能力。

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