Cancer staging provides a basis for planning clinical management, but also allows for meaningful analysis of cancer outcomes and evaluation of cancer care services. Despite this, stage data in cancer registries is often incomplete, inaccurate, or simply not collected. This article describes a prototype software system (Cancer Stage Interpretation System, CSIS) that automatically extracts cancer staging information from medical reports. The system uses text classification techniques to train support vector machines (SVMs) to extract elements of stage listed in cancer staging guidelines. When processing new reports, CSIS identifies sentences relevant to the staging decision, and subsequently assigns the most likely stage. The system was devel...
Background: Stage at diagnosis is a strong predictor of cancer survival. Differences in stage distri...
Health care and clinical practice generate large amounts of text detailing symptoms, test results, d...
Background In the era of datafication, it is important that medical data are accurate and structured...
Objectives: This paper describes a system to automatically classify the stage of a lung cancer patie...
Aims Pathology notification for a Cancer Registry is regarded as the most valid information for the ...
Thesis (Ph.D.)--University of Washington, 2016-06Medical practice involves an astonishing amount of ...
International audienceObjective: Our study aimed to construct and evaluate functions called "classif...
Valuable information is stored in a healthcare record system and over 40% of it is estimated to be u...
A cancer pathology report is a valuable medical document that provides information for clinical mana...
Background: Surgical pathology reports (SPR) contain rich clinical diagnosis information. The text i...
Objective We address the task of extracting information from free-text pathology reports, focusing o...
Objective: To develop a system for the automatic classification of pathology reports for Cancer Regi...
Objective: To automatically generate structured reports for cancer, including TNM (Tumour-Node-Metas...
Background: Natural language processing (NLP) is thought to be a promising solution to extract and s...
Pathology reports primarily consist of unstructured free text and thus the clinical information cont...
Background: Stage at diagnosis is a strong predictor of cancer survival. Differences in stage distri...
Health care and clinical practice generate large amounts of text detailing symptoms, test results, d...
Background In the era of datafication, it is important that medical data are accurate and structured...
Objectives: This paper describes a system to automatically classify the stage of a lung cancer patie...
Aims Pathology notification for a Cancer Registry is regarded as the most valid information for the ...
Thesis (Ph.D.)--University of Washington, 2016-06Medical practice involves an astonishing amount of ...
International audienceObjective: Our study aimed to construct and evaluate functions called "classif...
Valuable information is stored in a healthcare record system and over 40% of it is estimated to be u...
A cancer pathology report is a valuable medical document that provides information for clinical mana...
Background: Surgical pathology reports (SPR) contain rich clinical diagnosis information. The text i...
Objective We address the task of extracting information from free-text pathology reports, focusing o...
Objective: To develop a system for the automatic classification of pathology reports for Cancer Regi...
Objective: To automatically generate structured reports for cancer, including TNM (Tumour-Node-Metas...
Background: Natural language processing (NLP) is thought to be a promising solution to extract and s...
Pathology reports primarily consist of unstructured free text and thus the clinical information cont...
Background: Stage at diagnosis is a strong predictor of cancer survival. Differences in stage distri...
Health care and clinical practice generate large amounts of text detailing symptoms, test results, d...
Background In the era of datafication, it is important that medical data are accurate and structured...