Athreya Arjun, Iyer Ravishankar, Neavin Drew, Wang Liewei, Weinshilboum Richard, Kaddurah-Daouk Rima, Rush John, Frye Mark, Bobo William
Department of Electrical and Computer Engineering, Univ. of Illinois at Urbana-Champaign, IL, USA.
Department of Molecular Pharmacology and Experimental Therapeutics, Mayo Clinic, MN, USA.
IEEE Comput Intell Mag. 2018 Aug;13(3):20-31. doi: 10.1109/MCI.2018.2840660. Epub 2018 Jul 20.
This work proposes a "" workflow to sequentially augment physician assessments of patients' symptoms and their socio-demographic measures with heterogeneous biological measures to accurately predict treatment outcomes using machine learning. Across many psychiatric illnesses, ranging from major depressive disorder to schizophrenia, symptom severity assessments are subjective and do not include biological measures, making predictability in eventual treatment outcomes a challenge. Using data from the Mayo Clinic PGRN-AMPS SSRI trial as a case study, this work demonstrates a significant improvement in the prediction accuracy for antidepressant treatment outcomes in patients with major depressive disorder from 35% to 80% individualized by patient, compared to using only a physician's assessment as the predictors. This improvement is achieved through an iterative overlay of biological measures, starting with metabolites (blood measures modulated by drug action) associated with symptom severity, and then adding in genes associated with metabolomic concentrations. Hence, therapeutic efficacy for a new patient can be assessed prior to treatment, using prediction models that take as inputs, selected biological measures and physician's assessments of depression severity. Of broader significance extending beyond psychiatry, the approach presented in this work can potentially be applied to predicting treatment outcomes for other medical conditions, such as migraine headaches or rheumatoid arthritis, for which patients are treated according to subject-reported assessments of symptom severity.
这项工作提出了一种“工作流程”,通过将医生对患者症状及其社会人口统计学指标的评估与异质性生物学指标相结合,利用机器学习来准确预测治疗结果。在从重度抑郁症到精神分裂症等多种精神疾病中,症状严重程度评估是主观的,且不包括生物学指标,这使得最终治疗结果的可预测性成为一项挑战。以梅奥诊所PGRN - AMPS SSRI试验的数据作为案例研究,这项工作表明,与仅使用医生评估作为预测指标相比,重度抑郁症患者抗抑郁治疗结果的预测准确性从35%显著提高到了80%(按患者个体化)。这种提高是通过生物学指标的迭代叠加实现的,首先是与症状严重程度相关的代谢物(受药物作用调节的血液指标),然后加入与代谢组浓度相关的基因。因此,对于新患者,可以在治疗前使用预测模型来评估治疗效果,这些模型将选定的生物学指标和医生对抑郁严重程度的评估作为输入。这项工作中提出的方法具有超越精神病学的更广泛意义,它有可能应用于预测其他医疗状况的治疗结果,如偏头痛或类风湿性关节炎,这些疾病的患者是根据主观报告的症状严重程度评估来进行治疗的。