Machine learning to guide clinical decision-making in abdominal surgery-a systematic literature review

被引:16
作者
Henn, Jonas [1 ]
Buness, Andreas [2 ,3 ]
Schmid, Matthias [2 ]
Kalff, Joerg C. [1 ]
Matthaei, Hanno [1 ]
机构
[1] Univ Bonn, Dept Gen Visceral Thorac & Vasc Surg, Bonn, Germany
[2] Univ Bonn, Inst Med Biometry Informat & Epidemiol, Bonn, Germany
[3] Univ Bonn, Inst Genom Stat & Bioinformat, Bonn, Germany
关键词
Abdominal surgery; Machine learning; Clinical decision-making; Risk prediction; Postoperative complications; Digitalization; ARTIFICIAL NEURAL-NETWORKS; COMPLICATIONS; PREDICTION; DIAGNOSIS; MODEL; INTELLIGENCE; VALIDATION; ALGORITHMS; MORTALITY; MEDICINE;
D O I
10.1007/s00423-021-02348-w
中图分类号
R61 [外科手术学];
学科分类号
摘要
Purpose therapy includes balancing benefits against risk, which remains a key task in all surgical disciplines. Decisions are oftentimes based on clinical experience while guidelines lack evidence-based background. Various medical fields capitalized the application of machine learning (ML), and preliminary research suggests promising implications in surgeons' workflow. Hence, we evaluated ML's contemporary and possible future role in clinical decision-making (CDM) focusing on abdominal surgery. Methods Using the PICO framework, relevant keywords and research questions were identified. Following the PRISMA guidelines, a systemic search strategy in the PubMed database was conducted. Results were filtered by distinct criteria and selected articles were manually full text reviewed. Results Literature review revealed 4,396 articles, of which 47 matched the search criteria. The mean number of patients included was 55,843. A total of eight distinct ML techniques were evaluated whereas AUROC was applied by most authors for comparing ML predictions vs. conventional CDM routines. Most authors (N = 30/47, 63.8%) stated ML's superiority in the prediction of benefits and risks of surgery. The identification of highly relevant parameters to be integrated into algorithms allowing a more precise prognosis was emphasized as the main advantage of ML in CDM. Conclusions A potential value of ML for surgical decision-making was demonstrated in several scientific articles. However, the low number of publications with only few collaborative studies between surgeons and computer scientists underpins the early phase of this highly promising field. Interdisciplinary research initiatives combining existing clinical datasets and emerging techniques of data processing may likely improve CDM in abdominal surgery in the future.
引用
收藏
页码:51 / 61
页数:11
相关论文
共 66 条
[31]   Artificial intelligence may help in predicting the need for additional surgery after endoscopic resection of T1 colorectal cancer [J].
Ichimasa, Katsuro ;
Kudo, Shin-ei ;
Mori, Yuichi ;
Misawa, Masashi ;
Matsudaira, Shingo ;
Kouyama, Yuta ;
Baba, Toshiyuki ;
Hidaka, Eiji ;
Wakamura, Kunihiko ;
Hayashi, Takemasa ;
Kudo, Toyoki ;
Ishigaki, Tomoyuki ;
Yagawa, Yusuke ;
Nakamura, Hiroki ;
Takeda, Kenichi ;
Haji, Amyn ;
Hamatani, Shigeharu ;
Mori, Kensaku ;
Ishida, Fumio ;
Miyachi, Hideyuki .
ENDOSCOPY, 2018, 50 (03) :230-240
[32]   Development of a Machine Learning Model Predicting an ICU Admission for Patients with Elective Surgery and Its Prospective Validation in Clinical Practice [J].
Jauk, Stefanie ;
Kramer, Diether ;
Stark, Guenther ;
Hasiba, Karl ;
Leodolter, Werner ;
Schulz, Stefan ;
Kainz, Johann .
MEDINFO 2019: HEALTH AND WELLBEING E-NETWORKS FOR ALL, 2019, 264 :173-177
[33]   Using Machine Learning Applied to Real-World Healthcare Data for Predictive Analytics: An Applied Example in Bariatric Surgery [J].
Johnston, Stephen S. ;
Morton, John M. ;
Kalsekar, Iftekhar ;
Ammann, Eric M. ;
Hsiao, Chia-Wen ;
Reps, Jenna .
VALUE IN HEALTH, 2019, 22 (05) :580-586
[34]   The potential of machine learning to predict postoperative pancreatic fistula based on preoperative, non-contrast-enhanced CT: A proof-of-principle study [J].
Kambakamba, Patryk ;
Mannil, Manoj ;
Herrera, Paola E. ;
Mueller, Philip C. ;
Kuemmerli, Christoph ;
Linecker, Michael ;
von Spiczak, Jochen ;
Huellner, Martin W. ;
Raptis, Dimitri A. ;
Petrowsky, Henrik ;
Clavien, Pierre-Alain ;
Alkadhi, Hatem .
SURGERY, 2020, 167 (02) :448-454
[35]  
Knapp EA, 2016, ANN AM THORAC SOC, V13, P1173, DOI 10.1513/AnnalsATS.201511-781OC
[36]   Failure of Clinical Practice Guidelines to Meet Institute of Medicine Standards Two More Decades of Little, If Any, Progress [J].
Kung, Justin ;
Miller, Ram R. ;
Mackowiak, Philip A. .
ARCHIVES OF INTERNAL MEDICINE, 2012, 172 (21) :1628-1633
[37]   Usefulness of Deep Learning Analysis for the Diagnosis of Malignancy in Intraductal Papillary Mucinous Neoplasms of the Pancreas [J].
Kuwahara, Takamichi ;
Hara, Kazuo ;
Mizuno, Nobumasa ;
Okuno, Nozomi ;
Matsumoto, Shimpei ;
Obata, Masahiro ;
Kurita, Yusuke ;
Koda, Hiroki ;
Toriyama, Kazuhiro ;
Onishi, Sachiyo ;
Ishihara, Makoto ;
Tanaka, Tsutomu ;
Tajika, Masahiro ;
Niwa, Yasumasa .
CLINICAL AND TRANSLATIONAL GASTROENTEROLOGY, 2019, 10
[38]   Machine-Learning Algorithms Predict Graft Failure After Liver Transplantation [J].
Lau, Lawrence ;
Kankanige, Yamuna ;
Rubinstein, Benjamin ;
Jones, Robert ;
Christophi, Christopher ;
Muralidharan, Vijayaragavan ;
Bailey, James .
TRANSPLANTATION, 2017, 101 (04) :E125-E132
[39]   Development and Validation of a Deep Neural Network Model for Prediction of Postoperative In-hospital Mortality [J].
Lee, Christine K. ;
Hofer, Ira ;
Gabel, Eilon ;
Baldi, Pierre ;
Cannesson, Maxime .
ANESTHESIOLOGY, 2018, 129 (04) :649-662
[40]   A cross-sectional study on diabetes epidemiology among people aged 40 years and above in Shenyang, China [J].
Liu, Cong ;
Li, Xiaojiu ;
Lin, Muhui ;
Zheng, Limin ;
Chen, Xiaohong .
SCIENTIFIC REPORTS, 2020, 10 (01)