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OGC O04 the influence of age in oesophageal cancer treatment decisions: a machine-learning approach

OGC O04 the influence of age in oesophageal cancer treatment decisions: a machine-learning approach
OGC O04 the influence of age in oesophageal cancer treatment decisions: a machine-learning approach
Background: although patient age plays a crucial role in determining curative treatment options for Oesophageal cancer (OC), the exact extent of its influence is not well defined. We used an interpretable machine learning (ML) approach to model for the first time the exact impact of age in combination with other key decision-drivers, such as tumour and patient characteristics, on the predicted probability of receiving different types of curative treatment as determined by a single centre OC multidisciplinary team (MDT).

Methods: retrospective analysis of 399 OC patients undergoing curative treatment between 2010-2020 at a tertiary unit. A random forests (RF) classifier model was trained to predict curative treatment decisions for OC patients (neoadjuvant chemotherapy (NACT) + surgery, neoadjuvant chemoradiotherapy (NACRT) + surgery or surgery alone). Variable importance (VI) and Partial Dependence (PD) analyses were used to map the importance of age in the model, its influence on the predicted probability of each treatment decision, and how that relationship was affected when interacting with other decision-driver co-variates.

Results: age was the most important variable for the model (26% of total importance). PD analysis demonstrated that patients over 70 years had a substantially higher predicted base probability of receiving curative surgery and lower probability of NACT. Moreover, while the probability of receiving surgery and NACT was primarily driven by disease characteristics (T and N staging) in patients < 70 years, age became increasingly important in predicting a surgery-only decision in those >70 years (P< 0.001). The base probability of surgery and NACRT decisions was additionally influenced by performance status and age, but age alone for NACT patients.

Conclusions: we have successfully combined ML modelling with PD analysis in a novel approach within the OC space to delineate the relationship between age and OC treatment decisions. Age heavily influences curative decisions for OC patients but plays a greater role in patients with specific tumour characteristics. This study provides the basis of a ML approach for examining subconscious decision-drivers in the management of OC. This in turn allows OC MDTs to examine areas of potential health inequality which may result from variability within that decision-making framework.
0007-1323
Thavanesan, Navamayooran
94f0a216-9131-431b-809c-f5a83146343d
Farahi, Arya
60072f79-991d-4eaf-b78e-63e2477851b0
Walters, Zoë
e1ccd35d-63a9-4951-a5da-59122193740d
Underwood, Timothy
8e81bf60-edd2-4b0e-8324-3068c95ea1c6
Vigneswaran, Ganesh
4e3865ad-1a15-4a27-b810-55348e7baceb
Thavanesan, Navamayooran
94f0a216-9131-431b-809c-f5a83146343d
Farahi, Arya
60072f79-991d-4eaf-b78e-63e2477851b0
Walters, Zoë
e1ccd35d-63a9-4951-a5da-59122193740d
Underwood, Timothy
8e81bf60-edd2-4b0e-8324-3068c95ea1c6
Vigneswaran, Ganesh
4e3865ad-1a15-4a27-b810-55348e7baceb

Thavanesan, Navamayooran, Farahi, Arya, Walters, Zoë, Underwood, Timothy and Vigneswaran, Ganesh (2023) OGC O04 the influence of age in oesophageal cancer treatment decisions: a machine-learning approach. British Journal of Surgery, 110 (Suppl. 8), [znad348.035]. (doi:10.1093/bjs/znad348.035).

Record type: Meeting abstract

Abstract

Background: although patient age plays a crucial role in determining curative treatment options for Oesophageal cancer (OC), the exact extent of its influence is not well defined. We used an interpretable machine learning (ML) approach to model for the first time the exact impact of age in combination with other key decision-drivers, such as tumour and patient characteristics, on the predicted probability of receiving different types of curative treatment as determined by a single centre OC multidisciplinary team (MDT).

Methods: retrospective analysis of 399 OC patients undergoing curative treatment between 2010-2020 at a tertiary unit. A random forests (RF) classifier model was trained to predict curative treatment decisions for OC patients (neoadjuvant chemotherapy (NACT) + surgery, neoadjuvant chemoradiotherapy (NACRT) + surgery or surgery alone). Variable importance (VI) and Partial Dependence (PD) analyses were used to map the importance of age in the model, its influence on the predicted probability of each treatment decision, and how that relationship was affected when interacting with other decision-driver co-variates.

Results: age was the most important variable for the model (26% of total importance). PD analysis demonstrated that patients over 70 years had a substantially higher predicted base probability of receiving curative surgery and lower probability of NACT. Moreover, while the probability of receiving surgery and NACT was primarily driven by disease characteristics (T and N staging) in patients < 70 years, age became increasingly important in predicting a surgery-only decision in those >70 years (P< 0.001). The base probability of surgery and NACRT decisions was additionally influenced by performance status and age, but age alone for NACT patients.

Conclusions: we have successfully combined ML modelling with PD analysis in a novel approach within the OC space to delineate the relationship between age and OC treatment decisions. Age heavily influences curative decisions for OC patients but plays a greater role in patients with specific tumour characteristics. This study provides the basis of a ML approach for examining subconscious decision-drivers in the management of OC. This in turn allows OC MDTs to examine areas of potential health inequality which may result from variability within that decision-making framework.

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Published date: 18 November 2023

Identifiers

Local EPrints ID: 499128
URI: http://eprints.soton.ac.uk/id/eprint/499128
ISSN: 0007-1323
PURE UUID: 4c84b591-5079-4b6f-b57d-b242fd1070f6
ORCID for Navamayooran Thavanesan: ORCID iD orcid.org/0000-0002-7127-9606
ORCID for Zoë Walters: ORCID iD orcid.org/0000-0002-1835-5868
ORCID for Timothy Underwood: ORCID iD orcid.org/0000-0001-9455-2188
ORCID for Ganesh Vigneswaran: ORCID iD orcid.org/0000-0002-4115-428X

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Date deposited: 10 Mar 2025 17:48
Last modified: 11 Mar 2025 03:04

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Author: Navamayooran Thavanesan ORCID iD
Author: Arya Farahi
Author: Zoë Walters ORCID iD

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