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Data Mining and Machine Learning on the Basis from Reflexive Eye Movements Can Predict Symptom Development in Individual Parkinson's Patients

机译:基于反射性眼球运动的数据挖掘和机器学习可以预测帕金森病患者的症状发展

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We are still not in a position to understand most of the brain's deeper computational properties. As a consequence, we also do not know how brain processes are affected by nerve cell deaths in neurodegenerative diseases (ND). We can register symptoms of ND such as motor and/or mental disorders (dementias) and even provide symptomatic relief, though the structural effects of these are in most cases not yet understood. Fortunately, with early diagnosis there are often many years of disease progression with symptoms that, when they are precisely monitored, may result in improved therapies. In the case of Parkinson's disease, measurements of eye movements can be diagnostic. In order to better understand their relationship to the underlying disease process, we have performed measurements of reflexive eye movements in Parkinson's disease (PD) patients. We have compared our measurements and algorithmic diagnoses with experts' diagnoses. The purpose of our work was to find universal rules, using rough set theory, to classify how condition attributes predict the neurologist's diagnosis. Prediction of individual UPDRS values only from reflexive saccade (RS) latencies was not possible. But for n = 10 patients, the patient's age, latency, amplitude, and duration of RS gave a global accuracy in individual patients' UPRDS predictions of about 80%, based on cross-validation. This demonstrates that broadening the spectrum of physical measurements and applying data mining and machine learning (ML) can lead to a powerful bio-marker for symptom progression in Parkinson's.
机译:我们仍然无法理解大部分大脑的更深层计算特性。结果,我们也不知道神经退行性疾病(ND)中的神经细胞死亡如何影响脑部过程。我们可以记录诸如运动和/或精神障碍(痴呆症)之类的ND症状,甚至可以减轻症状,尽管在大多数情况下,其结构效果尚不明确。幸运的是,通过早期诊断,通常有很多年的疾病进展,伴随着症状,如果对其进行精确监测,可能会改善治疗方法。在帕金森氏病的情况下,眼动的测量可以诊断。为了更好地了解它们与潜在疾病过程的关系,我们对帕金森氏病(PD)患者的自反性眼球运动进行了测量。我们将测量结果和算法诊断与专家诊断进行了比较。我们工作的目的是使用粗糙集理论找到通用规则,以对条件属性如何预测神经科医生的诊断进行分类。无法仅通过反射性扫视(RS)潜伏期来预测单个UPDRS值。但是对于n = 10的患者,根据交叉验证,患者的年龄,潜伏期,幅度和持续时间在单个患者的UPRDS预测中提供了大约80%的全球准确性。这表明扩大物理测量的范围并应用数据挖掘和机器学习(ML)可以导致帕金森氏症症状发展的强大生物标志物。

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