Personalization of Medical Treatment Decisions: Simplifying Complex Models while Maintaining Patient Health Outcomes

2021 ◽  
pp. 0272989X2110379
Author(s):  
Christopher Weyant ◽  
Margaret L. Brandeau

Background Personalizing medical treatments based on patient-specific risks and preferences can improve patient health. However, models to support personalized treatment decisions are often complex and difficult to interpret, limiting their clinical application. Methods We present a new method, using machine learning to create meta-models, for simplifying complex models for personalizing medical treatment decisions. We consider simple interpretable models, interpretable ensemble models, and noninterpretable ensemble models. We use variable selection with a penalty for patient-specific risks and/or preferences that are difficult, risky, or costly to obtain. We interpret the meta-models to the extent permitted by their model architectures. We illustrate our method by applying it to simplify a previously developed model for personalized selection of antipsychotic drugs for patients with schizophrenia. Results The best simplified interpretable, interpretable ensemble, and noninterpretable ensemble models contained at most half the number of patient-specific risks and preferences compared with the original model. The simplified models achieved 60.5% (95% credible interval [crI]: 55.2–65.4), 60.8% (95% crI: 55.5–65.7), and 83.8% (95% crI: 80.8–86.6), respectively, of the net health benefit of the original model (quality-adjusted life-years gained). Important variables in all models were similar and made intuitive sense. Computation time for the meta-models was orders of magnitude less than for the original model. Limitations The simplified models share the limitations of the original model (e.g., potential biases). Conclusions Our meta-modeling method is disease- and model- agnostic and can be used to simplify complex models for personalization, allowing for variable selection in addition to improved model interpretability and computational performance. Simplified models may be more likely to be adopted in clinical settings and can help improve equity in patient outcomes.

2021 ◽  
pp. 0272989X2110137
Author(s):  
Christopher Weyant ◽  
Margaret L. Brandeau

Background Personalizing medical treatment decisions based on patient-specific risks and/or preferences can improve health outcomes. Decision makers frequently select treatments based on partial personalization (e.g., personalization based on risks but not preferences or vice versa) due to a lack of data about patient-specific risks and preferences. However, partially personalizing treatment decisions based on a subset of patient risks and/or preferences can result in worse population-level health outcomes than no personalization and can increase the variance of population-level health outcomes. Methods We develop a new method for partially personalizing treatment decisions that avoids these problems. Using a case study of antipsychotic treatment for schizophrenia, as well as 4 additional illustrative examples, we demonstrate the adverse effects and our method for avoiding them. Results For the schizophrenia treatment case study, using a previously proposed modeling approach for personalizing treatment decisions and using only a subset of patient preferences regarding treatment efficacy and side effects, mean population-level health outcomes decreased by 0.04 quality-adjusted life-years (QALYs; 95% credible interval [crI]: 0.02–0.06) per patient compared with no personalization. Using our new method and considering the same subset of patient preferences, mean population-level health outcomes increased by 0.01 QALYs (95% crI: 0.00–0.03) per patient as compared with no personalization, and the variance decreased. Limitations We assumed a linear and additive utility function. Conclusions Selecting personalized treatments for patients should be done in a way that does not decrease expected population-level health outcomes and does not increase their variance, thereby resulting in worse risk-adjusted, population-level health outcomes compared with treatment selection with no personalization. Our method can be used to ensure this, thereby helping patients realize the benefits of treatment personalization without the potential harms.


e-GIGI ◽  
2013 ◽  
Vol 1 (2) ◽  
Author(s):  
Agung Prasetya Gunawan

Rekam medis merupakan salah satu bukti tertulis tentang proses pelayanan yang diberikan oleh dokter dan dokter gigi karena di dalam rekam medis berisi data klinis pasien selama proses diagnosis dan pengobatan. Rekam medis sangat penting dalam pelayanan bagi pasien karena data yang lengkap dapat memberikan informasi untuk menentukan keputusan dalam pengobatan, penanganan dan tindakan medis. Penelitian ini bertujuan untuk mengetahui gambaran rekam medis gigi Puskesmas Bahu kecamatan Malalayang di kota Manado ditinjau dari Standar Nasional Rekam Medis Kedokteran Gigi.Populasi dalam penelitian ini adalah seluruh data rekam medis gigi di Puskesmas Bahu Kota Manado pada bulan Januari hingga Maret tahun 2012. Hasil penelitian diperoleh bahwa rata-rata kelengkapan identitas pasien pada rekam medis gigi pasien yang ada di Puskesmas Bahu masih sangat kurang dan belum lengkap seperti tidak memiliki catatan kesehatan umum pasien, catatan odontogram dantabel jadwal kunjungan. Kata kunci : rekam medis. ABSTRACTMedical recordsis one of the evidence of the services provided by doctors and dentists because in the medical record contains clinical dataof patients during the process of diagnosis and treatment. Medical records are very important in the service of the patient as a complete data can provide information for determining treatment decisions, treatment and medical treatment. This study aims to describe dental medical records of Bahu Clinic of Manado in terms of the National Standard Medical Record Dentistry. The population in this study were all medical records in the health center dental Bahu Manado City in January to March 2012. The result showed that the average completeness of medical records of the patient's identity on an existing dental patients in Bahu Clinic is still lacking and incomplete as not having general patient health records, tables odontogramand tables scheduled visit. Keywords: medical records.


1998 ◽  
Author(s):  
Andrea L. Washburne ◽  
Sandra L. Schneider ◽  
Teresa Broughton

2014 ◽  
Vol 8 (3) ◽  
pp. 260-266 ◽  
Author(s):  
Adam D. Leary ◽  
Michael D. Schwartz ◽  
Mark A. Kirk ◽  
Joselito S. Ignacio ◽  
Elaine B. Wencil ◽  
...  

AbstractDecontaminating patients who have been exposed to hazardous chemicals can directly benefit the patients’ health by saving lives and reducing the severity of toxicity. While the importance of decontaminating patients to prevent the spread of contamination has long been recognized, its role in improving patient health outcomes has not been as widely appreciated. Acute chemical toxicity may manifest rapidly—often minutes to hours after exposure. Patient decontamination and emergency medical treatment must be initiated as early as possible to terminate further exposure and treat the effects of the dose already absorbed. In a mass exposure chemical incident, responders and receivers are faced with the challenges of determining the type of care that each patient needs (including medical treatment, decontamination, and behavioral health support), providing that care within the effective window of time, and protecting themselves from harm. The US Department of Health and Human Services and Department of Homeland Security have led the development of national planning guidance for mass patient decontamination in a chemical incident to help local communities meet these multiple, time-sensitive health demands. This report summarizes the science on which the guidance is based and the principles that form the core of the updated approach. (Disaster Med Public Health Preparedness. 2014;0:1–7)


2010 ◽  
Vol 298 (2) ◽  
pp. H699-H718 ◽  
Author(s):  
Martin J. Bishop ◽  
Gernot Plank ◽  
Rebecca A. B. Burton ◽  
Jürgen E. Schneider ◽  
David J. Gavaghan ◽  
...  

Recent advances in magnetic resonance (MR) imaging technology have unveiled a wealth of information regarding cardiac histoanatomical complexity. However, methods to faithfully translate this level of fine-scale structural detail into computational whole ventricular models are still in their infancy, and, thus, the relevance of this additional complexity for simulations of cardiac function has yet to be elucidated. Here, we describe the development of a highly detailed finite-element computational model (resolution: ∼125 μm) of rabbit ventricles constructed from high-resolution MR data (raw data resolution: 43 × 43 × 36 μm), including the processes of segmentation (using a combination of level-set approaches), identification of relevant anatomical features, mesh generation, and myocyte orientation representation (using a rule-based approach). Full access is provided to the completed model and MR data. Simulation results were compared with those from a simplified model built from the same images but excluding finer anatomical features (vessels/endocardial structures). Initial simulations showed that the presence of trabeculations can provide shortcut paths for excitation, causing regional differences in activation after pacing between models. Endocardial structures gave rise to small-scale virtual electrodes upon the application of external field stimulation, which appeared to protect parts of the endocardium in the complex model from strong polarizations, whereas intramural virtual electrodes caused by blood vessels and extracellular cleft spaces appeared to reduce polarization of the epicardium. Postshock, these differences resulted in the genesis of new excitation wavefronts that were not observed in more simplified models. Furthermore, global differences in the stimulus recovery rates of apex/base regions were observed, causing differences in the ensuing arrhythmogenic episodes. In conclusion, structurally simplified models are well suited for a large range of cardiac modeling applications. However, important differences are seen when behavior at microscales is relevant, particularly when examining the effects of external electrical stimulation on tissue electrophysiology and arrhythmia induction. This highlights the utility of histoanatomically detailed models for investigations of cardiac function, in particular for future patient-specific modeling.


Sign in / Sign up

Export Citation Format

Share Document