| Literature DB >> 31453373 |
Eli M Cahan1,2, Tina Hernandez-Boussard3,4,5, Sonoo Thadaney-Israni4, Daniel L Rubin3,4,6.
Abstract
Technologies leveraging big data, including predictive algorithms and machine learning, are playing an increasingly important role in the delivery of healthcare. However, evidence indicates that such algorithms have the potential to worsen disparities currently intrinsic to the contemporary healthcare system, including racial biases. Blame for these deficiencies has often been placed on the algorithm-but the underlying training data bears greater responsibility for these errors, as biased outputs are inexorably produced by biased inputs. The utility, equity, and generalizability of predictive models depend on population-representative training data with robust feature sets. So while the conventional paradigm of big data is deductive in nature-clinical decision support-a future model harnesses the potential of big data for inductive reasoning. This may be conceptualized as clinical decision questioning, intended to liberate the human predictive process from preconceived lenses in data solicitation and/or interpretation. Efficacy, representativeness and generalizability are all heightened in this schema. Thus, the possible risks of biased big data arising from the inputs themselves must be acknowledged and addressed. Awareness of data deficiencies, structures for data inclusiveness, strategies for data sanitation, and mechanisms for data correction can help realize the potential of big data for a personalized medicine era. Applied deliberately, these considerations could help mitigate risks of perpetuation of health inequity amidst widespread adoption of novel applications of big data.Entities:
Keywords: Data integration; Machine learning; Medical ethics; Public health; Quality control
Year: 2019 PMID: 31453373 PMCID: PMC6700078 DOI: 10.1038/s41746-019-0157-2
Source DB: PubMed Journal: NPJ Digit Med ISSN: 2398-6352
Selected current machine learning applications using big data in healthcare
| Specialty | Clinical Problem | Methodology | Source |
|---|---|---|---|
| Radiology | Coronary artery calcification Thoracic lesion inspection Mammography | Enhanced image reconstruction Improved feature detection (diagnostic) Improved feature interpretation (prognostic) | Giger ML. J Am Coll Radiol. 2018;15(3 Pt B):512–20. |
| Pathology | Breast cancer | Enhanced image reconstruction Improved feature detection (diagnostic) Improved feature interpretation (prognostic) | Beck AH, Sangoi AR, Leung S, Marinelli RJ, Nielsen TO, van de Vijver MJ, et al. Sci Transl Med. 2011;3(108):108ra13. |
| Ophthalmology | Diabetic retinopathy | Enhanced image reconstruction Improved feature detection (diagnostic) | Gulshan V, Peng L, Coram M, Stumpe MC, Wu D, Narayanaswamy A, et al. JAMA. 2016;316(22):2402–10. |
| Emergency Medicine | Clinical triage | Use of retrospective EHR data for training→outcome prediction upon new patient presentation | Hong WS, Haimovich AD, Taylor RA. PLoS One. 2018;13(7):e0201016. |
| Cardiology | Heart failure outcomes | Use of retrospective EHR data for training→outcome prediction upon new patient presentation | Ahmad T, Lund LH, Rao P, Ghosh R, Warier P, Vaccaro B, et al. J Am Heart Assoc. 2018;7(8). |
| Neurology | Ischemic stroke outcomes | Use of retrospective EHR data for training→outcome prediction upon new patient presentation | Asadi H, Dowling R, Yan B, Mitchell P. PLoS One. 2014;9(2):e88225. |
| Dermatology | Melanoma staging | Enhanced image reconstruction Improved feature detection (diagnostic) | Gautam D, Ahmed M, Meena YK, Ul Haq A. Int J Numer Method Biomed Eng. 2018;34(5):e2953. |
Documented instances of measurement error using connected devices
| Specialty | Clinical problem | Device/Instrument | Source |
|---|---|---|---|
| Rehabilitation medicine | Ambulation exercise tolerance | Accelerometer | Yang Y, Schumann M, Le S, Cheng S. PeerJ. 2018;6:e5775. |
| Orthopedics | Range of motion | Digitized protractor/goniometer | Awatani T, Enoki T, Morikita I. J Phys Ther Sci. 2017;29(10):1869–73. |
| Occupational health | Pneumoconioses | Environmental monitor | de Nazelle A, Seto E, Donaire-Gonzalez D, Mendez M, Matamala J, Nieuwenhuijsen MJ, et al. Environ Pollut. 2013;176:92–9. |
| Cardiology | Hypertension ischemic heart disease | Smartphone sphygmomanometer | Lee ES, Lee JS, Joo MC, Kim JH, Noh SE. Ann Rehabil Med. 2017;41(1):129–37. |
| Infection disease | Microbial outbreaks | Crowdsensors | Edoh T. J Med Syst. 2018;42(5):91. |
| Neurology | Gait abnormality Parkinson’s disease | Smartphone gyroscope | Ellis RJ, Ng YS, Zhu S, Tan DM, Anderson B, Schlaug G, et al. PLoS One. 2015;10(10):e0141694. |
| Otolaryngology | Hearing loss | Ambient sonography | Ventura R, Mallet V, Issarny V, Raverdy PG, Rebhi F. J Acoust Soc Am. 2017;142(5):3084. |
| Endocrinology | Prediabetes diabetes | Glucometer | Vettoretti M, Facchinetti A, Sparacino G, Cobelli C. Conf Proc IEEE Eng Med Biol Soc. 2015;2015:2359–62. |
| Opthalmology | Physical examination | Optical biometer | Rozema JJ, Wouters K, Mathysen DG, Tassignon MJ. Am J Ophthalmol. 2014;158(6):1111–20 e1. |
Fig. 1Guidelines describing quality standards for analytical datasets (used and modified with permission from Cai and Zhu[51]