Review of Acute Kidney Injury Classification Using Machine Learning

被引:0
作者
Shah, Norliyana Nor Hisham [1 ]
Razak, Normy [1 ]
Abu-Samah, Asma [2 ]
Razak, Athirah Abdul [1 ]
机构
[1] Univ Tenaga Nas, Coll Engn, Kajang, Malaysia
[2] Univ Kebangsaan Malaysia, Dept Elect Elect & Syst Engn, Bangi, Malaysia
来源
2020 IEEE-EMBS CONFERENCE ON BIOMEDICAL ENGINEERING AND SCIENCES (IECBES 2020): LEADING MODERN HEALTHCARE TECHNOLOGY ENHANCING WELLNESS | 2021年
关键词
acute kidney injury; intensive care unit; AKI prediction; machine learning; diabetes; ACUTE-RENAL-FAILURE; CRITICALLY-ILL PATIENTS; AKI; SCORE; DEFINITION; PREDICTION; THERAPY; SOFA;
D O I
10.1109/IECBES48179.2021.9398774
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
The incidence of acute kidney injury (AKI) across hospitalized patients, especially in the intensive care unit (ICU) is worrying due to its prevalence and association with mortality. The sudden decrease in kidney function can be identified by an increase in serum creatinine or decreasing urine output. The severity of AM stages can be defined according to Kidney Disease: Improving Global Outcomes (KDIGO) classifications. Several studies have reported AKI associated risk factors such as sepsis and rates of mortality. Due to this concern, machine learning has been implemented to predict AM incidences utilizing several techniques such as Decision Tree, Random Forest, Support Vector Machine, k-Nearest Neighbour, and Gradient Boosting Method. The performances of these models were measured by area under the receiver operating characteristic curve (AUROC). This review examines ICU-based AM incidences and the use of machine learning techniques to predict AKI incidences. It highlights the complementary data used to perform the prediction and its performance based on AUROC. The models studied in this review demonstrated AUROCs between 0.57 to 0.95. Diabetes and hyperglycemia have been demonstrated as significant risk factors for AM in the ICU. Hence, insulin sensitivity representing a patient's metabolic variation is suggested as another variable to predict AKI incidence.
引用
收藏
页码:324 / 328
页数:5
相关论文
共 37 条
  • [1] Acute Kidney Injury in Intensive Care Unit, Hospital Universiti Sains Malaysia: A Descriptive Study
    Ab Hamid, Siti-Azrin
    Adnan, Wan-Nor-Asyikeen Wan
    Naing, Nyi Nyi
    Adnan, Azreen Syazril
    [J]. SAUDI JOURNAL OF KIDNEY DISEASES AND TRANSPLANTATION, 2018, 29 (05) : 1109 - 1114
  • [2] Septic acute kidney injury in critically ill patients: Clinical characteristics and outcomes
    Bagshaw, Sean M.
    Uchino, Shigehiko
    Bellomo, Rinaldo
    Morimatsu, Hiroshi
    Morgera, Stanislao
    Schetz, Miet
    Tan, Ian
    Bouman, Catherine
    Macedo, Ettiene
    Gibney, Noel
    Tolwani, Ashita
    Oudemans-van Straaten, Heleen M.
    Ronco, Claudio
    Kellum, John A.
    [J]. CLINICAL JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2007, 2 (03): : 431 - 439
  • [3] Acute renal failure - definition, outcome measures, animal models, fluid therapy and information technology needs: the Second International Consensus Conference of the Acute Dialysis Quality Initiative (ADQI) Group
    Bellomo, R
    Ronco, C
    Kellum, JA
    Mehta, RL
    Palevsky, P
    [J]. CRITICAL CARE, 2004, 8 (04): : R204 - R212
  • [4] Elevated plasma concentrations of IL-6 and elevated APACHE II score predict acute kidney injury in patients with severe sepsis
    Chawla, Lakhmir S.
    Seneff, Michael G.
    Nelson, David R.
    Williams, Mark
    Levy, Howard
    Kimmel, Paul L.
    Macias, William L.
    [J]. CLINICAL JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2007, 2 (01): : 22 - 30
  • [5] Acute kidney injury, mortality, length of stay, and costs in hospitalized patients
    Chertow, GM
    Burdick, E
    Honour, M
    Bonventre, JV
    Bates, DW
    [J]. JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2005, 16 (11): : 3365 - 3370
  • [6] Machine learning versus physicians' prediction of acute kidney injury in critically ill adults: a prospective evaluation of the AKIpredictor
    Flechet, Marine
    Falini, Stefano
    Bonetti, Claudia
    Guiza, Fabian
    Schetz, Miet
    Van den Berghe, Greet
    Meyfroidt, Geert
    [J]. CRITICAL CARE, 2019, 23 (01)
  • [7] Changes in acute kidney injury epidemiology in critically ill patients: a population-based cohort study in Korea
    Hwang, Subin
    Park, Hyejeong
    Kim, Youngha
    Kang, Danbee
    Ku, Ho Suk
    Cho, Juhee
    Lee, Jung Eun
    Huh, Wooseong
    Guallar, Eliseo
    Suh, Gee Young
    Jang, Hye Ryoun
    [J]. ANNALS OF INTENSIVE CARE, 2019, 9 (1)
  • [8] KDIGO Clinical Practice Guidelines for Acute Kidney Injury
    Khwaja, Arif
    [J]. NEPHRON CLINICAL PRACTICE, 2012, 120 (04): : C179 - C184
  • [9] Prediction of Acute Kidney Injury after Liver Transplantation: Machine Learning Approaches vs. Logistic Regression Model
    Lee, Hyung-Chul
    Yoon, Soo Bin
    Yang, Seong-Mi
    Kim, Won Ho
    Ryu, Ho-Geol
    Jung, Chul-Woo
    Suh, Kyung-Suk
    Lee, Kook Hyun
    [J]. JOURNAL OF CLINICAL MEDICINE, 2018, 7 (11)
  • [10] Derivation and Validation of Machine Learning Approaches to Predict Acute Kidney Injury after Cardiac Surgery
    Lee, Hyung-Chul
    Yoon, Hyun-Kyu
    Nam, Karam
    Cho, Youn Joung
    Kim, Tae Kyong
    Kim, Won Ho
    Bahk, Jae-Hyon
    [J]. JOURNAL OF CLINICAL MEDICINE, 2018, 7 (10):