4.6 Article

Deep learning-based AI model for signet-ring cell carcinoma diagnosis and chemotherapy response prediction in gastric cancer

Journal

MEDICAL PHYSICS
Volume 49, Issue 3, Pages 1535-1546

Publisher

WILEY
DOI: 10.1002/mp.15437

Keywords

chemotherapy; deep learning; diagnosis; signet-ring cell carcinoma; survival

Funding

  1. National Key R&D Program of China [2017YFC1309100, 2017YFA0205200]
  2. National Natural Science Foundation of China [91959130, 81971776, 81902437, 81771924, 61622117, 81671759, 81930053, 81527805, 91959205]
  3. Beijing Natural Science Foundation [L182061, Z20J00105, JQ19027]
  4. Beijing Nova Program [Z181100006218046]
  5. 1.3.5 Project for Disciplines of Excellence, West China Hospital, Sichuan University [ZYJC21006]
  6. West China Hospital, Sichuan University [2018HXBH010]
  7. China Postdoctoral Science Foundation [2019M653418, 2020T130449]
  8. Strategic Priority Research Program of Chinese Academy of Sciences [XDB 38040200]
  9. Scientific Instrument Developing Project of the Chinese Academy of Sciences [YZ201672]
  10. Youth Innovation Promotion Association CAS [2017175]

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The study developed a noninvasive AI model based on preoperative CT scans to diagnose and predict prognoses of SRCC in gastric cancer patients. The AI model showed good performance in diagnosing SRCC, stratifying patient prognosis, and predicting chemotherapy responses. Patients identified as high-risk by the AI model may benefit significantly from adjuvant chemotherapy.
Purpose We aimed to develop a noninvasive artificial intelligence (AI) model to diagnose signet-ring cell carcinoma (SRCC) of gastric cancer (GC) and identify patients with SRCC who could benefit from postoperative chemotherapy based on preoperative contrast-enhanced computed tomography (CT). Methods A total of 855 GC patients with 855 single GCs were included, of which 249 patients were diagnosed as SRCC by histopathologic examinations. The AI model was generated with clinical, handcrafted radiomic, and deep learning features. Model diagnostic performance was measured by area under the receiver operating characteristic curve (AUC), sensitivity, and specificity, while predictive performance was measured by Kaplan-Meier curves. Results In the test cohort (n = 257), the AUC, sensitivity, and specificity of our AI model for diagnosing SRCC were 0.786 (95% CI: 0.721-0.845), 77.3%, and 69.2%, respectively. For the entire cohort, patients with AI-predicted high risk had a significantly shorter median OS compared with those with low risk (median overall survival [OS], 38.8 vs. 64.2 months, p = 0.009). Importantly, in pathologically confirmed advanced SRCC patients, AI-predicted high-risk status was indicative of a shorter overall survival (median overall survival [OS], 31.0 vs. 54.4 months, p = 0.036) and marked chemotherapy resistance, whereas AI-predicted low-risk status had substantial chemotherapy benefit (median OS [without vs. with chemotherapy], 26.0 vs. not reached, p = 0.013). Conclusions The CT-based AI model demonstrated good performance for diagnosing SRCC, stratifying patient prognosis, and predicting chemotherapy responses. Advanced SRCC patients with AI-predicted low-risk status may benefit substantially from adjuvant chemotherapy.

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