Differential Diagnosis of Hematologic and Solid Tumors Using Targeted Transcriptome and Artificial Intelligence

被引:9
作者
Zhang, Hong [1 ]
Qureshi, Muhammad A. [2 ]
Wahid, Mohsin [2 ]
Charifa, Ahmad [1 ]
Ehsan, Aamir [3 ]
Ip, Andrew [4 ]
De Dios, Ivan [1 ]
Ma, Wanlong [1 ]
Sharma, Ipsa [1 ]
McCloskey, James [4 ]
Donato, Michele [4 ]
Siegel, David [4 ]
Gutierrez, Martin [4 ]
Pecora, Andrew [4 ]
Goy, Andre [4 ,5 ]
Albitar, Maher [1 ,5 ,6 ]
机构
[1] Genom Testing Cooperat, Irvine, CA USA
[2] Dow Univ Hlth Sci Karachi, Karachi, Pakistan
[3] Core Path Labs, San Antonio, TX USA
[4] Hackensack Meridian Hlth, John Theurer Canc Ctr, Hackensack, NJ USA
[5] Hackensack Meridian Sch Med, Nutley, NJ USA
[6] Genom Testing Cooperat, 175 Technol Dr 100, Irvine, CA 92186 USA
关键词
GENE FUSIONS; CANCER;
D O I
10.1016/j.ajpath.2022.09.006
中图分类号
R36 [病理学];
学科分类号
100104 ;
摘要
Diagnosis and classification of tumors is increasingly dependent on biomarkers. RNA expression profiling using next-generation sequencing provides reliable and reproducible information on the biology of cancer. This study investigated targeted transcriptome and artificial intelligence for dif-ferential diagnosis of hematologic and solid tumors. RNA samples from hematologic neoplasms (N = 2606), solid tumors (N = 2038), normal bone marrow (N = 782), and lymph node control (N = 24) were sequenced using next-generation sequencing using a targeted 1408-gene panel. Twenty subtypes of hematologic neoplasms and 24 subtypes of solid tumors were identified. Machine learning was used for diagnosis between two classes. Geometric mean naive Bayesian classifier was used for differential diagnosis across 45 diagnostic entities with assigned rankings. Machine learning showed high accuracy in distinguishing between two diagnoses, with area under the curve varying between 1 and 0.841. Geometric mean naive Bayesian algorithm was trained using 3045 samples and tested on 1415 samples, and showed correct first-choice diagnosis in 100%, 88%, 85%, 82%, 88%, 72%, and 72% of acute lymphoblastic leukemia, acute myeloid leukemia, diffuse large B-cell lymphoma, colorectal cancer, lung cancer, chronic lymphocytic leukemia, and follicular lymphoma cases, respectively. The data indicate that targeted transcriptome combined with artificial intelligence are highly useful for diagnosis and classification of various cancers. Mutation profiles and clinical information can improve these algorithms and minimize errors in diagnoses.
引用
收藏
页码:51 / 59
页数:9
相关论文
共 36 条
  • [1] Computer-based Diagnosis of Skin Tumors using artificial Intelligence
    Wolfsperger, F. C.
    Yazdi, A. S.
    HAUTARZT, 2017, 68 (10): : 859 - 860
  • [2] Artificial intelligence for solid tumour diagnosis in digital pathology
    Klein, Christophe
    Zeng, Qinghe
    Arbaretaz, Floriane
    Devevre, Estelle
    Calderaro, Julien
    Lomenie, Nicolas
    Maiuri, Maria Chiara
    BRITISH JOURNAL OF PHARMACOLOGY, 2021, 178 (21) : 4291 - 4315
  • [3] Cancer diagnosis using artificial intelligence: a review
    Shastry, K. Aditya
    Sanjay, H. A.
    ARTIFICIAL INTELLIGENCE REVIEW, 2022, 55 (04) : 2641 - 2673
  • [4] Cancer diagnosis using artificial intelligence: a review
    K Aditya Shastry
    H A Sanjay
    Artificial Intelligence Review, 2022, 55 : 2641 - 2673
  • [5] A novel artificial intelligence segmentation model for early diagnosis of bladder tumors
    Li, Lu
    Jiang, Lingxiao
    Yang, Kun
    Luo, Bin
    Wang, Xinghuan
    ABDOMINAL RADIOLOGY, 2024,
  • [6] Artificial intelligence using deep learning analysis of endoscopic ultrasonography images for the differential diagnosis of pancreatic masses
    Kuwahara, Takamichi
    Hara, Kazuo
    Mizuno, Nobumasa
    Haba, Shin
    Okuno, Nozomi
    Kuraishi, Yasuhiro
    Fumihara, Daiki
    Yanaidani, Takafumi
    Ishikawa, Sho
    Yasuda, Tsukasa
    Yamada, Masanori
    Onishi, Sachiyo
    Yamada, Keisaku
    Tanaka, Tsutomu
    Tajika, Masahiro
    Niwa, Yasumasa
    Yamaguchi, Rui
    Shimizu, Yasuhiro
    ENDOSCOPY, 2023, 55 (02) : 140 - 149
  • [7] Predicting PD-L1 Status in Solid Tumors Using Transcriptomic Data and Artificial Intelligence Algorithms
    Charifa, Ahmad
    Lam, Alfonso
    Zhang, Hong
    Ip, Andrew
    Pecora, Andrew
    Waintraub, Stanley
    Graham, Deena
    Mcnamara, Donna
    Gutierrez, Martin
    Jennis, Andrew
    Sharma, Ipsa
    Estella, Jeffrey
    Ma, Wanlong
    Goy, Andre
    Albitar, Maher
    JOURNAL OF IMMUNOTHERAPY, 2024, 47 (01) : 10 - 15
  • [8] Application of Artificial Intelligence in the Diagnosis, Treatment, and Prognostic Evaluation of Mediastinal Malignant Tumors
    Pang, Jiyun
    Xiu, Weigang
    Ma, Xuelei
    JOURNAL OF CLINICAL MEDICINE, 2023, 12 (08)
  • [9] Unearthing novel fusions as therapeutic targets in solid tumors using targeted RNA sequencing
    An, Sungbin
    Koh, Hyun Hee
    Chang, Eun Sol
    Choi, Juyoung
    Song, Ji-Young
    Lee, Mi-Sook
    Choi, Yoon-La
    FRONTIERS IN ONCOLOGY, 2022, 12
  • [10] TRANSVAGINAL DOPPLER EXAMINATION FOR THE DIFFERENTIAL-DIAGNOSIS OF SOLID PELVIC TUMORS
    SLADKEVICIUS, P
    VALENTIN, L
    MARSAL, K
    JOURNAL OF ULTRASOUND IN MEDICINE, 1995, 14 (05) : 377 - 380