Background: Severe sepsis and septic shock are still the leading causes of death in Intensive Care Units (ICUs), and timely diagnosis is crucial for treatment outcomes. The progression of electronic medical records (EMR) offers the possibility of storing a large quantity of clinical data that can facilitate the development of artificial intelligence (AI) in medicine. However, several difficulties, such as poor structure and heterogenicity of the raw EMR data, are encountered when introducing AI with ICU data. Labor-intensive work, including manual data entry, personal medical records sorting, and laboratory results interpretation may hinder the progress of AI. In this article, we introduce the developing of an AI algorithm designed for sepsis diagnosis using pre-selected features; and compare the performance of the AI algorithm with SOFA score based diagnostic method. Materials and methods: This is a prospective open-label cohort study. A specialized EMR, named TED_ICU, was implemented for continuous data recording. One hundred six clinical features relevant to sepsis diagnosis were selected prospectively. A labeling work to allocate SEPSIS or NON_SEPSIS status for each ICU patient was performed by the in-charge intensivist according to SEPSIS-3 criteria, along with the automatic recording of selected features every day by TED_ICU. Afterward, we use de-identified data to develop the AI algorithm. Several machine learning methods were evaluated using 5-fold cross-validation, and XGBoost, a decision-tree based algorithm was adopted for our AI algorithm development due to best performance. Results: The study was conducted between August 2018 and December 2018 for the first stage of analysis. We collected 1588 instances, including 444 SEPSIS and 1144 NON-SEPSIS, from 434 patients. The 434 patients included 259 (59.6%) male patients and 175 female patients. The mean age was 67.6-year-old, and the mean APACHE II score was 13.8. The SEPSIS cohort had a higher SOFA score and increased use of organ support treatment. The AI algorithm was developed with a shuffle method using 80% of the instances for training and 20% for testing. The established AI algorithm achieved the following: accuracy = 82% +/- 1%; sensitivity = 65% +/- 5%; specificity = 88% +/- 2%; precision = 67% +/- 3%; and F1 = 0.66 +/- 0.02. The area under the receiver operating characteristic curve (AUROC) was approximately 0.89. The SOFA score was used on the same 1588 instances for sepsis diagnosis, and the result was inferior to our AI algorithm (AUROC = 0.596). Conclusion: Using real-time data, collected by EMR, from the ICU daily practice, our AI algorithm established with pre-selected features and XGBoost can provide a timely diagnosis of sepsis with an accuracy greater than 80%. AI algorithm also outperforms the SOFA score in sepsis diagnosis and exhibits practicality as clinicians can deploy appropriate treatment earlier. The early and precise response of this AI algorithm will result in cost reduction, outcome improvement, and benefit for healthcare systems, medical staff, and patients as well.
机构:
Univ British Columbia, St Pauls Hosp, Ctr Heart Lung Innovat, Vancouver, BC, CanadaUniv British Columbia, St Pauls Hosp, Ctr Heart Lung Innovat, Vancouver, BC, Canada
Genga, Kelly Roveran
Russell, James A.
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h-index: 0
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Univ British Columbia, St Pauls Hosp, Ctr Heart Lung Innovat, Vancouver, BC, Canada
Univ British Columbia, St Pauls Hosp, Dept Med, Vancouver, BC, CanadaUniv British Columbia, St Pauls Hosp, Ctr Heart Lung Innovat, Vancouver, BC, Canada
机构:
Univ British Columbia, Div Crit Care, BC Childrens Hosp, Vancouver, BC, CanadaUniv British Columbia, Div Crit Care, BC Childrens Hosp, Vancouver, BC, Canada
Singal, Mona
Mizuno, Yumiko
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Univ British Columbia, Div Crit Care, BC Childrens Hosp, Vancouver, BC, CanadaUniv British Columbia, Div Crit Care, BC Childrens Hosp, Vancouver, BC, Canada
Mizuno, Yumiko
Skippen, Peter
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Univ British Columbia, Div Crit Care, BC Childrens Hosp, Vancouver, BC, CanadaUniv British Columbia, Div Crit Care, BC Childrens Hosp, Vancouver, BC, Canada
Skippen, Peter
Kissoon, Niranjan
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h-index: 0
机构:
Univ British Columbia, Div Crit Care, BC Childrens Hosp, Vancouver, BC, CanadaUniv British Columbia, Div Crit Care, BC Childrens Hosp, Vancouver, BC, Canada
机构:
Bankura Sammilani Med Coll, Community Med, Bankura, W Bengal, IndiaBankura Sammilani Med Coll, Community Med, Bankura, W Bengal, India
Sarkar, A. P.
Dhar, G.
论文数: 0引用数: 0
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机构:
Govt West Bengal, Community Med, Kolkata, India
Govt West Bengal, West Bengal Med Educ Serv, Kolkata, IndiaBankura Sammilani Med Coll, Community Med, Bankura, W Bengal, India
Dhar, G.
Sarkar, M. D.
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机构:
Govt West Bengal, West Bengal Med Educ Serv, Kolkata, India
Govt West Bengal, Microbiol, Kolkata, IndiaBankura Sammilani Med Coll, Community Med, Bankura, W Bengal, India
Sarkar, M. D.
Ghosh, T. K.
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Bankura Sammilani Med Coll, Dept Pathol, Bankura, W Bengal, IndiaBankura Sammilani Med Coll, Community Med, Bankura, W Bengal, India
Ghosh, T. K.
Ghosh, S.
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Bankura Sammilani Med Coll, Dept Pathol, Bankura, W Bengal, IndiaBankura Sammilani Med Coll, Community Med, Bankura, W Bengal, India
Ghosh, S.
BANGLADESH JOURNAL OF MEDICAL SCIENCE,
2015,
14
(02):
: 169
-
172
机构:
St Michaels Hosp, Li Ka Shing Knowledge Inst, Unity Hlth Toronto, 30 Bond St, Toronto, ON M5B 1W8, Canada
Univ Toronto, Fac Med, Toronto, ON, Canada
Univ Toronto, Leslie Dan Fac Pharm, Toronto, ON, CanadaSt Michaels Hosp, Li Ka Shing Knowledge Inst, Unity Hlth Toronto, 30 Bond St, Toronto, ON M5B 1W8, Canada
Mamdani, Muhammad
Slutsky, Arthur S.
论文数: 0引用数: 0
h-index: 0
机构:
St Michaels Hosp, Unity Hlth Toronto, Li Ka Shing Knowledge Inst, Keenan Res Ctr Biol Sci, 30 Bond St, Toronto, ON M5B 1W8, Canada
Univ Toronto, Interdept Div Crit Care Med, Toronto, ON, CanadaSt Michaels Hosp, Li Ka Shing Knowledge Inst, Unity Hlth Toronto, 30 Bond St, Toronto, ON M5B 1W8, Canada
机构:
Heidelberg Univ, Zentrum Pravent Med & Digitale Gesundheit, Med Fak Mannheim, Mannheim, Germany
Heidelberg Univ, Med Fak Mannheim, Zentrum Pravent Med & Digitale Gesundheit, Theodor Kutzer Ufer 1-3, D-68167 Mannheim, GermanyHeidelberg Univ, Zentrum Pravent Med & Digitale Gesundheit, Med Fak Mannheim, Mannheim, Germany
Baumgart, Andre
Beck, Grietje
论文数: 0引用数: 0
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机构:
Heidelberg Univ, Abt Anasthesiol Intens Med & Schmerzmed, Univ Med Mannheim gGmbH, Med Fak Mannheim, Mannheim, GermanyHeidelberg Univ, Zentrum Pravent Med & Digitale Gesundheit, Med Fak Mannheim, Mannheim, Germany
Beck, Grietje
Ghezel-Ahmadi, David
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Heidelberg Univ, Abt Anasthesiol Intens Med & Schmerzmed, Univ Med Mannheim gGmbH, Med Fak Mannheim, Mannheim, GermanyHeidelberg Univ, Zentrum Pravent Med & Digitale Gesundheit, Med Fak Mannheim, Mannheim, Germany