What Else do Epileptic Data Reveal

R. Shanmugam
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Abstract

Problem statement: Aggregating and analyzing data of all patients using statistical methodologies as often done in macro sense would be not useful when physician’s professional interest was only to provide the best medical care to the patient. For this purpose, individual data of the involved patient should be analyzed and modeled in a micro sense for the physician to notice whether the treatment was helping the particular patient as demonstrated in this article. Understandably, a medical treatment would work in some patients but not in all patients. The physician would be more helped to know whether the treatment worked in a patient. Otherwise, the physician might switch to another treatment for the patient. No appropriate methodology existed in the literature to perform such a profile analysis. Hence, this article introduced a new statistical methodology and demonstrated the methodology using epileptic data. Approach: A probabilistic approach was necessary, as the number of epilepsy seizure in a patient happened to involve a degree of uncertainty. In some patient, the chance for a large number of seizures might be more depending on his/her proneness. The proneness would be a latent and non-measurable factor and hence, it could be captured only as a parameter. The traditional Poisson distribution was not suitable as it assumed homogeneous patients with respect to the proneness. The probability model should match the reality. A generalized Poisson model with an additional parameter to describe individual patient’s proneness was necessary as the article demonstrated. The author introduced such a model and investigated several statistical properties before in another article A new methodology with that probability was devised in this article for assessing the efficacy of a treatment for a chosen patient in epilepsy study. Results: Physicians pondered over whether epilepsy seizure incidences data support their hunch that their treatment was successful for a patient. This kind of case-by-case profiling was necessary to exercise the option of switching to another treatment for the patient. Aggregated medical data analysis of all patients did not help in making decision for a particular patient. The results of this article demonstrated about how the new methodology worked in epilepsy data to confirm when the treatment was successful. Patients, nurses and physicians were eager to develop an early warning system about how successful the treatment was in a patient. Such an early warning system was feasible, after finding the probability pattern of the data, because of the new methodology in this article. The discussions in this article could be emulated for other medical data analysis to address patient’s profile. Conclusions/Recommendations: As demonstrated with an example using epilepsy data, other medical data could be fit, analyzed and interpreted using the incidence rate restricted Poisson model. Not only the incidence rate but also the restriction level on the incidence rate due to the treatment could be estimated and tested. The proximity of the patients could then be identified using the indices based on mapping the principal components of their data as demonstrated in the article.
癫痫数据还揭示了什么
问题陈述:当医生的专业兴趣仅仅是为病人提供最好的医疗护理时,通常在宏观意义上使用统计方法汇总和分析所有病人的数据是没有用的。为此,应该对患者的个人数据进行微观分析和建模,以便医生注意到治疗是否对特定患者有帮助,如本文所示。可以理解的是,药物治疗对一些病人有效,但不是对所有病人都有效。医生将更有助于了解治疗是否对病人有效。否则,医生可能会对病人采取另一种治疗方法。在文献中没有合适的方法来进行这样的分析。因此,本文介绍了一种新的统计方法,并用癫痫数据对该方法进行了论证。方法:由于患者癫痫发作次数有一定程度的不确定性,采用概率方法是必要的。在某些患者中,大量癫痫发作的机会可能更多地取决于他/她的倾向性。倾向性将是一个潜在的和不可测量的因素,因此,它只能作为一个参数来捕捉。传统的泊松分布不适合,因为它假定患者的倾向性是均匀的。概率模型应该与现实相符。一个具有附加参数的广义泊松模型来描述个体患者的倾向性是必要的。作者在之前的另一篇文章中介绍了这种模型,并研究了几种统计性质,本文设计了一种新的方法,该方法具有该概率,用于评估癫痫研究中选定患者的治疗效果。结果:医生们考虑癫痫发作的发生率数据是否支持他们的预感,即他们的治疗对病人是成功的。这种个案分析是必要的,以行使选择切换到另一种治疗的病人。汇总所有患者的医疗数据分析并不能帮助对特定患者做出决策。这篇文章的结果证明了新的方法如何在癫痫数据中工作,以确认治疗何时成功。病人、护士和医生都渴望开发一种早期预警系统,告诉病人这种治疗有多成功。在找到数据的概率模式后,这种预警系统是可行的,因为本文采用了新的方法。本文中的讨论可以模拟用于其他医疗数据分析,以解决患者概况。结论/建议:以癫痫数据为例表明,其他医学数据也可以使用发病率受限泊松模型进行拟合、分析和解释。不仅可以估计和检测发病率,而且可以估计和检测治疗对发病率的限制程度。然后可以使用基于映射其数据的主要成分的索引来识别患者的接近程度,如文章中所示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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