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Erschienen in: Journal of Medical Systems 2/2019

01.02.2019 | Systems-Level Quality Improvement

A Machine Learning Approach to Predicting Case Duration for Robot-Assisted Surgery

verfasst von: Beiqun Zhao, Ruth S. Waterman, Richard D. Urman, Rodney A. Gabriel

Erschienen in: Journal of Medical Systems | Ausgabe 2/2019

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Abstract

Robot-assisted surgery (RAS) requires a large capital investment by healthcare organizations. The cost of a robotic unit is fixed, so institutions must maximize use of each unit by utilizing all available operating room block time. One way to increase utilization is to accurately predict case durations. In this study, we sought to use machine learning to develop an accurate predictive model for RAS case duration. We analyzed a random sample of robotic cases at our institution from January 2014 to June 2017. We compared the machine learning models to the baseline model, which is the scheduled case duration (determined by previous case duration averages and surgeon adjustments). Specifically, we used: 1) multivariable linear regression, 2) ridge regression, 3) lasso regression, 4) random forest, 5) boosted regression tree, and 6) neural network. We found that all machine learning models decreased the average root-mean-squared error (RMSE) as compared to the baseline model. The average RMSE was lowest with the boosted regression tree (80.2 min, 95% CI 74.0–86.4), which was significantly lower than the baseline model (100.4 min, 95% CI 90.5–110.3). Using boosted regression tree, we can increase the number of accurately booked cases from 148 to 219 (34.9% to 51.7%, p < 0.001). This study shows that using various machine learning approaches can improve the accuracy of RAS case length predictions, which will increase utilization of this limited resource. Further work is needed to operationalize these findings.
Literatur
4.
Zurück zum Zitat Intuitive Surgical (2016) Intuitive Surgical, Inc. 2016 Annual Report Intuitive Surgical (2016) Intuitive Surgical, Inc. 2016 Annual Report
6.
Zurück zum Zitat Barbash, G. I., and Glied, S. A., New technology and health care costs - the case of robot-assisted surgery. N. Engl. J. Med. 363:701–704, 2010.CrossRef Barbash, G. I., and Glied, S. A., New technology and health care costs - the case of robot-assisted surgery. N. Engl. J. Med. 363:701–704, 2010.CrossRef
12.
13.
Zurück zum Zitat Kayış, E., Wang, H., Patel, M., Gonzalez, T., Jain, S., Ramamurthi, R. J., Santos, C., Singhal, S., Suermondt, J., and Sylvester, K., Improving prediction of surgery duration using operational and temporal factors. AMIA Ann. Symp. Proc.:456–462, 2012. Kayış, E., Wang, H., Patel, M., Gonzalez, T., Jain, S., Ramamurthi, R. J., Santos, C., Singhal, S., Suermondt, J., and Sylvester, K., Improving prediction of surgery duration using operational and temporal factors. AMIA Ann. Symp. Proc.:456–462, 2012.
18.
Zurück zum Zitat Stepaniak, P. S., Heij, C., Mannaerts, G. H. H., De Quelerij, M., and De Vries, G., Modeling procedure and surgical times for current procedural terminology-anesthesia-surgeon combinations and evaluation in terms of case-duration prediction and operating room efficiency: a multicenter study. Anesth. Analg. 109:1232–1245, 2009. https://doi.org/10.1213/ANE.0b013e3181b5de07.CrossRefPubMed Stepaniak, P. S., Heij, C., Mannaerts, G. H. H., De Quelerij, M., and De Vries, G., Modeling procedure and surgical times for current procedural terminology-anesthesia-surgeon combinations and evaluation in terms of case-duration prediction and operating room efficiency: a multicenter study. Anesth. Analg. 109:1232–1245, 2009. https://​doi.​org/​10.​1213/​ANE.​0b013e3181b5de07​.CrossRefPubMed
22.
Zurück zum Zitat Bejnordi, B. E., Veta, M., Van Diest, P. J., Van Ginneken, B., Karssemeijer, N., Litjens, G., Van Der Laak, J. A. W. M., Hermsen, M., Manson, Q. F., Balkenhol, M., Geessink, O., Stathonikos, N., Van Dijk, M. C. R. F., Bult, P., Beca, F., Beck, A. H., Wang, D., Khosla, A., Gargeya, R., Irshad, H., Zhong, A., Dou, Q., Li, Q., Chen, H., Lin, H. J., Heng, P. A., Haß, C., Bruni, E., Wong, Q., Halici, U., Öner, M. Ü., Cetin-Atalay, R., Berseth, M., Khvatkov, V., Vylegzhanin, A., Kraus, O., Shaban, M., Rajpoot, N., Awan, R., Sirinukunwattana, K., Qaiser, T., Tsang, Y. W., Tellez, D., Annuscheit, J., Hufnagl, P., Valkonen, M., Kartasalo, K., Latonen, L., Ruusuvuori, P., Liimatainen, K., Albarqouni, S., Mungal, B., George, A., Demirci, S., Navab, N., Watanabe, S., Seno, S., Takenaka, Y., Matsuda, H., Phoulady, H. A., Kovalev, V., Kalinovsky, A., Liauchuk, V., Bueno, G., Fernandez-Carrobles, M. M., Serrano, I., Deniz, O., Racoceanu, D., and Venâncio, R., Diagnostic assessment of deep learning algorithms for detection of lymph node metastases in women with breast cancer. JAMA 318:2199–2210, 2017. https://doi.org/10.1001/jama.2017.14585.CrossRef Bejnordi, B. E., Veta, M., Van Diest, P. J., Van Ginneken, B., Karssemeijer, N., Litjens, G., Van Der Laak, J. A. W. M., Hermsen, M., Manson, Q. F., Balkenhol, M., Geessink, O., Stathonikos, N., Van Dijk, M. C. R. F., Bult, P., Beca, F., Beck, A. H., Wang, D., Khosla, A., Gargeya, R., Irshad, H., Zhong, A., Dou, Q., Li, Q., Chen, H., Lin, H. J., Heng, P. A., Haß, C., Bruni, E., Wong, Q., Halici, U., Öner, M. Ü., Cetin-Atalay, R., Berseth, M., Khvatkov, V., Vylegzhanin, A., Kraus, O., Shaban, M., Rajpoot, N., Awan, R., Sirinukunwattana, K., Qaiser, T., Tsang, Y. W., Tellez, D., Annuscheit, J., Hufnagl, P., Valkonen, M., Kartasalo, K., Latonen, L., Ruusuvuori, P., Liimatainen, K., Albarqouni, S., Mungal, B., George, A., Demirci, S., Navab, N., Watanabe, S., Seno, S., Takenaka, Y., Matsuda, H., Phoulady, H. A., Kovalev, V., Kalinovsky, A., Liauchuk, V., Bueno, G., Fernandez-Carrobles, M. M., Serrano, I., Deniz, O., Racoceanu, D., and Venâncio, R., Diagnostic assessment of deep learning algorithms for detection of lymph node metastases in women with breast cancer. JAMA 318:2199–2210, 2017. https://​doi.​org/​10.​1001/​jama.​2017.​14585.CrossRef
Metadaten
Titel
A Machine Learning Approach to Predicting Case Duration for Robot-Assisted Surgery
verfasst von
Beiqun Zhao
Ruth S. Waterman
Richard D. Urman
Rodney A. Gabriel
Publikationsdatum
01.02.2019
Verlag
Springer US
Erschienen in
Journal of Medical Systems / Ausgabe 2/2019
Print ISSN: 0148-5598
Elektronische ISSN: 1573-689X
DOI
https://doi.org/10.1007/s10916-018-1151-y

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