Evidence-based pathology in its second decade: toward probabilistic cognitive computing.

Evidence-based pathology advocates using a combination of best available data ("evidence") from the literature and personal experience for the diagnosis, estimation of prognosis, and assessment of other variables that impact individual patient care. Evidence-based pathology relies on systematic reviews of the literature, evaluation of the quality of evidence as categorized by evidence levels and statistical tools such as meta-analyses, estimates of probabilities and odds, and others. However, it is well known that previously "statistically significant" information usually does not accurately forecast the future for individual patients. There is great interest in "cognitive computing" in which "data mining" is combined with "predictive analytics" designed to forecast future events and estimate the strength of those predictions. This study demonstrates the use of IBM Watson Analytics software to evaluate and predict the prognosis of 101 patients with typical and atypical pulmonary carcinoid tumors in which Ki-67 indices have been determined. The results obtained with this system are compared with those previously reported using "routine" statistical software and the help of a professional statistician. IBM Watson Analytics interactively provides statistical results that are comparable to those obtained with routine statistical tools but much more rapidly, with considerably less effort and with interactive graphics that are intuitively easy to apply. It also enables analysis of natural language variables and yields detailed survival predictions for patient subgroups selected by the user. Potential applications of this tool and basic concepts of cognitive computing are discussed.

[1]  Joseph Conn Predictive analytics tools help hospitals reduce preventable readmissions. , 2014, Modern healthcare.

[2]  C. Dirksen,et al.  How to integrate research evidence on patient preferences in pharmaceutical coverage decisions and clinical practice guidelines: A qualitative study among Dutch stakeholders. , 2016, Health policy.

[3]  Viju Raghupathi,et al.  Big data analytics in healthcare: promise and potential , 2014, Health Information Science and Systems.

[4]  O. Hejlesen,et al.  Toward Big Data Analytics , 2016, Journal of diabetes science and technology.

[5]  A. Marchevsky,et al.  Limited role of Ki-67 proliferative index in predicting overall short-term survival in patients with typical and atypical pulmonary carcinoid tumors , 2012, Modern Pathology.

[6]  G H Guyatt,et al.  Users' guides to the medical literature. II. How to use an article about therapy or prevention. B. What were the results and will they help me in caring for my patients? Evidence-Based Medicine Working Group. , 1994, JAMA.

[7]  Matthew B Schabath,et al.  Lung cancer screening, version 1.2015: featured updates to the NCCN guidelines. , 2015, Journal of the National Comprehensive Cancer Network : JNCCN.

[8]  Neural networks as an aid in the diagnosis of lymphocyte-rich effusions. , 1995, Analytical and quantitative cytology and histology.

[9]  Gordon H. Guyatt,et al.  Users' Guides to the Medical Literature: II. How to Use an Article About Therapy or Prevention B. What Were the Results and Will They Help Me in Caring for My Patients? , 1994 .

[10]  D. Sackett Rules of evidence and clinical recommendations for the management of patients. , 1993, The Canadian journal of cardiology.

[11]  T. Fabian,et al.  History and Development of Evidence-based Medicine , 2005, World Journal of Surgery.

[12]  Adam Miller The future of health care could be elementary with Watson , 2013, Canadian Medical Association Journal.

[13]  J. Jaworek-Korjakowska,et al.  Automatic Classification of Specific Melanocytic Lesions Using Artificial Intelligence , 2016, BioMed research international.

[14]  A M Marchevsky,et al.  Neural networks as a prognostic tool for patients with non-small cell carcinoma of the lung. , 1997, Modern pathology : an official journal of the United States and Canadian Academy of Pathology, Inc.

[15]  Daby M. Sow,et al.  IBM’s Health Analytics and Clinical Decision Support , 2014, Yearbook of Medical Informatics.

[16]  A. Marchevsky,et al.  Evidence-based pathology: systematic literature reviews as the basis for guidelines and best practices. , 2015, Archives of Pathology & Laboratory Medicine.

[17]  Alberto M Marchevsky,et al.  Evidence-based medicine, medical decision analysis, and pathology. , 2004, Human pathology.

[18]  A. Marchevsky,et al.  Interobserver diagnostic variability at "moderate" agreement levels could significantly change the prognostic estimates of clinicopathologic studies: evaluation of the problem using evidence from patients with diffuse lung disease. , 2010, Annals of diagnostic pathology.

[19]  Francesco Bianchini,et al.  Artificial intelligence and synthetic biology: A tri-temporal contribution , 2016, Biosyst..

[20]  What are evidence‐based guidelines and what are they not? , 2016, Acta paediatrica.

[21]  Richard Smith,et al.  Evidence based medicine—an oral history , 2014, BMJ : British Medical Journal.

[22]  A M Marchevsky,et al.  Image analysis and diagnostic classification of hepatocellular carcinoma using neural networks and multivariate discriminant functions. , 1994, Laboratory investigation; a journal of technical methods and pathology.

[23]  W. Travis WHO classification of tumours of the lung, pleura, thymus and heart , 2015 .

[24]  A. Marchevsky,et al.  The application of image analysis and neural network technology to the study of large‐cell liver‐cell dysplasia and hepatocellular carcinoma , 1997, Hepatology.

[25]  D. Sackett,et al.  Evidence based medicine: what it is and what it isn't , 1996, BMJ.

[26]  P. Levy,et al.  Exploring the Potential of Predictive Analytics and Big Data in Emergency Care. , 2016, Annals of emergency medicine.