Scientific Reports (Feb 2021)

Automated diagnostic support system with deep learning algorithms for distinction of Philadelphia chromosome-negative myeloproliferative neoplasms using peripheral blood specimen

  • Konobu Kimura,
  • Tomohiko Ai,
  • Yuki Horiuchi,
  • Akihiko Matsuzaki,
  • Kumiko Nishibe,
  • Setsuko Marutani,
  • Kaori Saito,
  • Kimiko Kaniyu,
  • Ikki Takehara,
  • Kinya Uchihashi,
  • Akimichi Ohsaka,
  • Yoko Tabe

DOI
https://doi.org/10.1038/s41598-021-82826-9
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 11

Abstract

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Abstract Philadelphia chromosome-negative myeloproliferative neoplasms (Ph-negative MPNs) such as polycythemia vera (PV), essential thrombocythemia (ET), and primary myelofibrosis are characterized by abnormal proliferation of mature bone marrow cell lineages. Since various non-hematologic disorders can also cause leukocytosis, thrombocytosis and polycythemia, the detection of abnormal peripheral blood cells is essential for the diagnostic screening of Ph-negative MPNs. We sought to develop an automated diagnostic support system of Ph-negative MPNs. Our strategy was to combine the complete blood cell count and research parameters obtained by an automated hematology analyzer (Sysmex XN-9000) with morphological parameters that were extracted using a convolutional neural network deep learning system equipped with an Extreme Gradient Boosting (XGBoost)-based decision-making algorithm. The developed system showed promising performance in the differentiation of PV, ET, and MF with high accuracy when compared with those of the human diagnoses, namely: > 90% sensitivity and > 90% specificity. The calculated area under the curve of the ROC curves were 0.990, 0.967, and 0.974 for PV, ET, MF, respectively. This study is a step toward establishing a universal automated diagnostic system for all types of hematology disorders.