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Collaboration between a human group and artificial intelligence can improve prediction of multiple sclerosis course: a proof-of-principle study

机译:人类与人工智能之间的协作可以改善对多发性硬化症病程的预测:一项原理证明研究

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摘要

>Background: Multiple sclerosis has an extremely variable natural course. In most patients, disease starts with a relapsing-remitting (RR) phase, which proceeds to a secondary progressive (SP) form. The duration of the RR phase is hard to predict, and to date predictions on the rate of disease progression remain suboptimal. This limits the opportunity to tailor therapy on an individual patient's prognosis, in spite of the choice of several therapeutic options. Approaches to improve clinical decisions, such as collective intelligence of human groups and machine learning algorithms are widely investigated. >Methods: Medical students and a machine learning algorithm predicted the course of disease on the basis of randomly chosen clinical records of patients that attended at the Multiple Sclerosis service of Sant'Andrea hospital in Rome. >Results: A significant improvement of predictive ability was obtained when predictions were combined with a weight that depends on the consistence of human (or algorithm) forecasts on a given clinical record. >Conclusions: In this work we present proof-of-principle that human-machine hybrid predictions yield better prognoses than machine learning algorithms or groups of humans alone. To strengthen and generalize this preliminary result, we propose a crowdsourcing initiative to collect prognoses by physicians on an expanded set of patients.
机译:>背景:多发性硬化症的自然病程变化很大。在大多数患者中,疾病始于复发缓解期(RR),然后发展为继发进行性(SP)形式。 RR阶段的持续时间很难预测,迄今为止,对疾病进展速度的预测仍然欠佳。尽管选择了几种治疗选择,但这仍然限制了根据个体患者的预后调整治疗的机会。人们广泛研究了改善临床决策的方法,例如人类的集体智慧和机器学习算法。 >方法:医学生和机器学习算法根据随机选择的罗马Sant'Andrea医院多发性硬化症患者就诊的临床记录预测疾病的进程。 >结果:将预测与权重相结合时,预测能力得到了显着提高,权重取决于人类(或算法)对给定临床记录的预测的一致性。 >结论:在这项工作中,我们提供了一种原理证明,即人机混合预测比单独的机器学习算法或一组人产生的预后更好。为了加强和概括这一初步结果,我们提出了一项众包计划,以收集医生对更多患者的预后。

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