Multimodal data integration using machine learning improves risk stratification of high-grade serous ovarian cancer

Patients with high-grade serous ovarian cancer suffer poor prognosis and variable response to treatment. Known prognostic factors for this disease include homologous recombination deficiency status, age, pathological stage and residual disease status after debulking surgery. Recent work has highligh...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Nature cancer 2022-06, Vol.3 (6), p.723-733
Hauptverfasser: Boehm, Kevin M., Aherne, Emily A., Ellenson, Lora, Nikolovski, Ines, Alghamdi, Mohammed, Vázquez-García, Ignacio, Zamarin, Dmitriy, Long Roche, Kara, Liu, Ying, Patel, Druv, Aukerman, Andrew, Pasha, Arfath, Rose, Doori, Selenica, Pier, Causa Andrieu, Pamela I., Fong, Chris, Capanu, Marinela, Reis-Filho, Jorge S., Vanguri, Rami, Veeraraghavan, Harini, Gangai, Natalie, Sosa, Ramon, Leung, Samantha, McPherson, Andrew, Gao, JianJiong, Lakhman, Yulia, Shah, Sohrab P.
Format: Artikel
Sprache:eng
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:Patients with high-grade serous ovarian cancer suffer poor prognosis and variable response to treatment. Known prognostic factors for this disease include homologous recombination deficiency status, age, pathological stage and residual disease status after debulking surgery. Recent work has highlighted important prognostic information captured in computed tomography and histopathological specimens, which can be exploited through machine learning. However, little is known about the capacity of combining features from these disparate sources to improve prediction of treatment response. Here, we assembled a multimodal dataset of 444 patients with primarily late-stage high-grade serous ovarian cancer and discovered quantitative features, such as tumor nuclear size on staining with hematoxylin and eosin and omental texture on contrast-enhanced computed tomography, associated with prognosis. We found that these features contributed complementary prognostic information relative to one another and clinicogenomic features. By fusing histopathological, radiologic and clinicogenomic machine-learning models, we demonstrate a promising path toward improved risk stratification of patients with cancer through multimodal data integration.
ISSN:2662-1347
2662-1347
DOI:10.1038/s43018-022-00388-9